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# Copyright 2024 Marigold authors, PRS ETH Zurich. All rights reserved. | |
# Copyright 2024 The HuggingFace Team. All rights reserved. | |
# | |
# Licensed under the Apache License, Version 2.0 (the "License"); | |
# you may not use this file except in compliance with the License. | |
# You may obtain a copy of the License at | |
# | |
# http://www.apache.org/licenses/LICENSE-2.0 | |
# | |
# Unless required by applicable law or agreed to in writing, software | |
# distributed under the License is distributed on an "AS IS" BASIS, | |
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. | |
# See the License for the specific language governing permissions and | |
# limitations under the License. | |
# -------------------------------------------------------------------------- | |
# More information and citation instructions are available on the | |
# -------------------------------------------------------------------------- | |
from dataclasses import dataclass | |
from typing import Any, Dict, List, Optional, Tuple, Union | |
import numpy as np | |
import torch | |
from PIL import Image | |
from tqdm.auto import tqdm | |
from transformers import CLIPImageProcessor, CLIPTextModel, CLIPTokenizer, CLIPVisionModelWithProjection | |
from diffusers.image_processor import PipelineImageInput | |
from diffusers.models import ( | |
AutoencoderKL, | |
UNet2DConditionModel, | |
ControlNetModel, | |
) | |
from diffusers.schedulers import ( | |
DDIMScheduler | |
) | |
from diffusers.utils import ( | |
BaseOutput, | |
logging, | |
replace_example_docstring, | |
) | |
from diffusers.models.unets.unet_2d_condition import UNet2DConditionOutput | |
from diffusers.utils import USE_PEFT_BACKEND, BaseOutput, deprecate, logging, scale_lora_layers, unscale_lora_layers | |
from diffusers.utils.torch_utils import randn_tensor | |
from diffusers.pipelines.controlnet import StableDiffusionControlNetPipeline | |
from diffusers.pipelines.pipeline_utils import DiffusionPipeline | |
from diffusers.pipelines.marigold.marigold_image_processing import MarigoldImageProcessor | |
from diffusers.pipelines.stable_diffusion.safety_checker import StableDiffusionSafetyChecker | |
import torch.nn.functional as F | |
import pdb | |
logger = logging.get_logger(__name__) # pylint: disable=invalid-name | |
EXAMPLE_DOC_STRING = """ | |
Examples: | |
```py | |
import diffusers | |
import torch | |
pipe = diffusers.MarigoldNormalsPipeline.from_pretrained( | |
"prs-eth/marigold-normals-lcm-v0-1", variant="fp16", torch_dtype=torch.float16 | |
).to("cuda") | |
image = diffusers.utils.load_image("https://marigoldmonodepth.github.io/images/einstein.jpg") | |
normals = pipe(image) | |
vis = pipe.image_processor.visualize_normals(normals.prediction) | |
vis[0].save("einstein_normals.png") | |
``` | |
""" | |
class StableNormalOutput(BaseOutput): | |
""" | |
Output class for Marigold monocular normals prediction pipeline. | |
Args: | |
prediction (`np.ndarray`, `torch.Tensor`): | |
Predicted normals with values in the range [-1, 1]. The shape is always $numimages \times 3 \times height | |
\times width$, regardless of whether the images were passed as a 4D array or a list. | |
uncertainty (`None`, `np.ndarray`, `torch.Tensor`): | |
Uncertainty maps computed from the ensemble, with values in the range [0, 1]. The shape is $numimages | |
\times 1 \times height \times width$. | |
latent (`None`, `torch.Tensor`): | |
Latent features corresponding to the predictions, compatible with the `latents` argument of the pipeline. | |
The shape is $numimages * numensemble \times 4 \times latentheight \times latentwidth$. | |
""" | |
prediction: Union[np.ndarray, torch.Tensor] | |
latent: Union[None, torch.Tensor] | |
gaus_noise: Union[None, torch.Tensor] | |
from einops import rearrange | |
class DINOv2_Encoder(torch.nn.Module): | |
IMAGENET_DEFAULT_MEAN = [0.485, 0.456, 0.406] | |
IMAGENET_DEFAULT_STD = [0.229, 0.224, 0.225] | |
def __init__( | |
self, | |
model_name = 'dinov2_vitl14', | |
freeze = True, | |
antialias=True, | |
device="cuda", | |
size = 448, | |
): | |
super(DINOv2_Encoder, self).__init__() | |
self.model = torch.hub.load('facebookresearch/dinov2', model_name) | |
self.model.eval().to(device) | |
self.device = device | |
self.antialias = antialias | |
self.dtype = torch.float32 | |
self.mean = torch.Tensor(self.IMAGENET_DEFAULT_MEAN) | |
self.std = torch.Tensor(self.IMAGENET_DEFAULT_STD) | |
self.size = size | |
if freeze: | |
self.freeze() | |
def freeze(self): | |
for param in self.model.parameters(): | |
param.requires_grad = False | |
def encoder(self, x): | |
''' | |
x: [b h w c], range from (-1, 1), rbg | |
''' | |
x = self.preprocess(x).to(self.device, self.dtype) | |
b, c, h, w = x.shape | |
patch_h, patch_w = h // 14, w // 14 | |
embeddings = self.model.forward_features(x)['x_norm_patchtokens'] | |
embeddings = rearrange(embeddings, 'b (h w) c -> b h w c', h = patch_h, w = patch_w) | |
return rearrange(embeddings, 'b h w c -> b c h w') | |
def preprocess(self, x): | |
''' x | |
''' | |
# normalize to [0,1], | |
x = torch.nn.functional.interpolate( | |
x, | |
size=(self.size, self.size), | |
mode='bicubic', | |
align_corners=True, | |
antialias=self.antialias, | |
) | |
x = (x + 1.0) / 2.0 | |
# renormalize according to dino | |
mean = self.mean.view(1, 3, 1, 1).to(x.device) | |
std = self.std.view(1, 3, 1, 1).to(x.device) | |
x = (x - mean) / std | |
return x | |
def to(self, device, dtype=None): | |
if dtype is not None: | |
self.dtype = dtype | |
self.model.to(device, dtype) | |
self.mean.to(device, dtype) | |
self.std.to(device, dtype) | |
else: | |
self.model.to(device) | |
self.mean.to(device) | |
self.std.to(device) | |
return self | |
def __call__(self, x, **kwargs): | |
return self.encoder(x, **kwargs) | |
class StableNormalPipeline(StableDiffusionControlNetPipeline): | |
""" Pipeline for monocular normals estimation using the Marigold method: https://marigoldmonodepth.github.io. | |
Pipeline for text-to-image generation using Stable Diffusion with ControlNet guidance. | |
This model inherits from [`DiffusionPipeline`]. Check the superclass documentation for the generic methods | |
implemented for all pipelines (downloading, saving, running on a particular device, etc.). | |
The pipeline also inherits the following loading methods: | |
- [`~loaders.TextualInversionLoaderMixin.load_textual_inversion`] for loading textual inversion embeddings | |
- [`~loaders.LoraLoaderMixin.load_lora_weights`] for loading LoRA weights | |
- [`~loaders.LoraLoaderMixin.save_lora_weights`] for saving LoRA weights | |
- [`~loaders.FromSingleFileMixin.from_single_file`] for loading `.ckpt` files | |
- [`~loaders.IPAdapterMixin.load_ip_adapter`] for loading IP Adapters | |
Args: | |
vae ([`AutoencoderKL`]): | |
Variational Auto-Encoder (VAE) model to encode and decode images to and from latent representations. | |
text_encoder ([`~transformers.CLIPTextModel`]): | |
Frozen text-encoder ([clip-vit-large-patch14](https://huggingface.co/openai/clip-vit-large-patch14)). | |
tokenizer ([`~transformers.CLIPTokenizer`]): | |
A `CLIPTokenizer` to tokenize text. | |
unet ([`UNet2DConditionModel`]): | |
A `UNet2DConditionModel` to denoise the encoded image latents. | |
controlnet ([`ControlNetModel`] or `List[ControlNetModel]`): | |
Provides additional conditioning to the `unet` during the denoising process. If you set multiple | |
ControlNets as a list, the outputs from each ControlNet are added together to create one combined | |
additional conditioning. | |
scheduler ([`SchedulerMixin`]): | |
A scheduler to be used in combination with `unet` to denoise the encoded image latents. Can be one of | |
[`DDIMScheduler`], [`LMSDiscreteScheduler`], or [`PNDMScheduler`]. | |
safety_checker ([`StableDiffusionSafetyChecker`]): | |
Classification module that estimates whether generated images could be considered offensive or harmful. | |
Please refer to the [model card](https://huggingface.co/runwayml/stable-diffusion-v1-5) for more details | |
about a model's potential harms. | |
feature_extractor ([`~transformers.CLIPImageProcessor`]): | |
A `CLIPImageProcessor` to extract features from generated images; used as inputs to the `safety_checker`. | |
""" | |
model_cpu_offload_seq = "text_encoder->image_encoder->unet->vae" | |
_optional_components = ["safety_checker", "feature_extractor", "image_encoder"] | |
_exclude_from_cpu_offload = ["safety_checker"] | |
_callback_tensor_inputs = ["latents", "prompt_embeds", "negative_prompt_embeds"] | |
def __init__( | |
self, | |
vae: AutoencoderKL, | |
text_encoder: CLIPTextModel, | |
tokenizer: CLIPTokenizer, | |
unet: UNet2DConditionModel, | |
controlnet: Union[ControlNetModel, List[ControlNetModel], Tuple[ControlNetModel]], | |
dino_controlnet: Union[ControlNetModel, List[ControlNetModel], Tuple[ControlNetModel]], | |
scheduler: Union[DDIMScheduler], | |
safety_checker: StableDiffusionSafetyChecker, | |
feature_extractor: CLIPImageProcessor, | |
image_encoder: CLIPVisionModelWithProjection = None, | |
requires_safety_checker: bool = True, | |
default_denoising_steps: Optional[int] = 10, | |
default_processing_resolution: Optional[int] = 768, | |
prompt="The normal map", | |
empty_text_embedding=None, | |
): | |
super().__init__( | |
vae, | |
text_encoder, | |
tokenizer, | |
unet, | |
controlnet, | |
scheduler, | |
safety_checker, | |
feature_extractor, | |
image_encoder, | |
requires_safety_checker, | |
) | |
self.register_modules( | |
dino_controlnet=dino_controlnet, | |
) | |
self.image_processor = MarigoldImageProcessor(vae_scale_factor=self.vae_scale_factor) | |
self.dino_image_processor = lambda x: x / 127.5 -1. | |
self.default_denoising_steps = default_denoising_steps | |
self.default_processing_resolution = default_processing_resolution | |
self.prompt = prompt | |
self.prompt_embeds = None | |
self.empty_text_embedding = empty_text_embedding | |
self.prior = DINOv2_Encoder(size=672) | |
def check_inputs( | |
self, | |
image: PipelineImageInput, | |
num_inference_steps: int, | |
ensemble_size: int, | |
processing_resolution: int, | |
resample_method_input: str, | |
resample_method_output: str, | |
batch_size: int, | |
ensembling_kwargs: Optional[Dict[str, Any]], | |
latents: Optional[torch.Tensor], | |
generator: Optional[Union[torch.Generator, List[torch.Generator]]], | |
output_type: str, | |
output_uncertainty: bool, | |
) -> int: | |
if num_inference_steps is None: | |
raise ValueError("`num_inference_steps` is not specified and could not be resolved from the model config.") | |
if num_inference_steps < 1: | |
raise ValueError("`num_inference_steps` must be positive.") | |
if ensemble_size < 1: | |
raise ValueError("`ensemble_size` must be positive.") | |
if ensemble_size == 2: | |
logger.warning( | |
"`ensemble_size` == 2 results are similar to no ensembling (1); " | |
"consider increasing the value to at least 3." | |
) | |
if ensemble_size == 1 and output_uncertainty: | |
raise ValueError( | |
"Computing uncertainty by setting `output_uncertainty=True` also requires setting `ensemble_size` " | |
"greater than 1." | |
) | |
if processing_resolution is None: | |
raise ValueError( | |
"`processing_resolution` is not specified and could not be resolved from the model config." | |
) | |
if processing_resolution < 0: | |
raise ValueError( | |
"`processing_resolution` must be non-negative: 0 for native resolution, or any positive value for " | |
"downsampled processing." | |
) | |
if processing_resolution % self.vae_scale_factor != 0: | |
raise ValueError(f"`processing_resolution` must be a multiple of {self.vae_scale_factor}.") | |
if resample_method_input not in ("nearest", "nearest-exact", "bilinear", "bicubic", "area"): | |
raise ValueError( | |
"`resample_method_input` takes string values compatible with PIL library: " | |
"nearest, nearest-exact, bilinear, bicubic, area." | |
) | |
if resample_method_output not in ("nearest", "nearest-exact", "bilinear", "bicubic", "area"): | |
raise ValueError( | |
"`resample_method_output` takes string values compatible with PIL library: " | |
"nearest, nearest-exact, bilinear, bicubic, area." | |
) | |
if batch_size < 1: | |
raise ValueError("`batch_size` must be positive.") | |
if output_type not in ["pt", "np"]: | |
raise ValueError("`output_type` must be one of `pt` or `np`.") | |
if latents is not None and generator is not None: | |
raise ValueError("`latents` and `generator` cannot be used together.") | |
if ensembling_kwargs is not None: | |
if not isinstance(ensembling_kwargs, dict): | |
raise ValueError("`ensembling_kwargs` must be a dictionary.") | |
if "reduction" in ensembling_kwargs and ensembling_kwargs["reduction"] not in ("closest", "mean"): | |
raise ValueError("`ensembling_kwargs['reduction']` can be either `'closest'` or `'mean'`.") | |
# image checks | |
num_images = 0 | |
W, H = None, None | |
if not isinstance(image, list): | |
image = [image] | |
for i, img in enumerate(image): | |
if isinstance(img, np.ndarray) or torch.is_tensor(img): | |
if img.ndim not in (2, 3, 4): | |
raise ValueError(f"`image[{i}]` has unsupported dimensions or shape: {img.shape}.") | |
H_i, W_i = img.shape[-2:] | |
N_i = 1 | |
if img.ndim == 4: | |
N_i = img.shape[0] | |
elif isinstance(img, Image.Image): | |
W_i, H_i = img.size | |
N_i = 1 | |
else: | |
raise ValueError(f"Unsupported `image[{i}]` type: {type(img)}.") | |
if W is None: | |
W, H = W_i, H_i | |
elif (W, H) != (W_i, H_i): | |
raise ValueError( | |
f"Input `image[{i}]` has incompatible dimensions {(W_i, H_i)} with the previous images {(W, H)}" | |
) | |
num_images += N_i | |
# latents checks | |
if latents is not None: | |
if not torch.is_tensor(latents): | |
raise ValueError("`latents` must be a torch.Tensor.") | |
if latents.dim() != 4: | |
raise ValueError(f"`latents` has unsupported dimensions or shape: {latents.shape}.") | |
if processing_resolution > 0: | |
max_orig = max(H, W) | |
new_H = H * processing_resolution // max_orig | |
new_W = W * processing_resolution // max_orig | |
if new_H == 0 or new_W == 0: | |
raise ValueError(f"Extreme aspect ratio of the input image: [{W} x {H}]") | |
W, H = new_W, new_H | |
w = (W + self.vae_scale_factor - 1) // self.vae_scale_factor | |
h = (H + self.vae_scale_factor - 1) // self.vae_scale_factor | |
shape_expected = (num_images * ensemble_size, self.vae.config.latent_channels, h, w) | |
if latents.shape != shape_expected: | |
raise ValueError(f"`latents` has unexpected shape={latents.shape} expected={shape_expected}.") | |
# generator checks | |
if generator is not None: | |
if isinstance(generator, list): | |
if len(generator) != num_images * ensemble_size: | |
raise ValueError( | |
"The number of generators must match the total number of ensemble members for all input images." | |
) | |
if not all(g.device.type == generator[0].device.type for g in generator): | |
raise ValueError("`generator` device placement is not consistent in the list.") | |
elif not isinstance(generator, torch.Generator): | |
raise ValueError(f"Unsupported generator type: {type(generator)}.") | |
return num_images | |
def progress_bar(self, iterable=None, total=None, desc=None, leave=True): | |
if not hasattr(self, "_progress_bar_config"): | |
self._progress_bar_config = {} | |
elif not isinstance(self._progress_bar_config, dict): | |
raise ValueError( | |
f"`self._progress_bar_config` should be of type `dict`, but is {type(self._progress_bar_config)}." | |
) | |
progress_bar_config = dict(**self._progress_bar_config) | |
progress_bar_config["desc"] = progress_bar_config.get("desc", desc) | |
progress_bar_config["leave"] = progress_bar_config.get("leave", leave) | |
if iterable is not None: | |
return tqdm(iterable, **progress_bar_config) | |
elif total is not None: | |
return tqdm(total=total, **progress_bar_config) | |
else: | |
raise ValueError("Either `total` or `iterable` has to be defined.") | |
def __call__( | |
self, | |
image: PipelineImageInput, | |
prompt: Union[str, List[str]] = None, | |
negative_prompt: Optional[Union[str, List[str]]] = None, | |
num_inference_steps: Optional[int] = None, | |
ensemble_size: int = 1, | |
processing_resolution: Optional[int] = None, | |
match_input_resolution: bool = True, | |
resample_method_input: str = "bilinear", | |
resample_method_output: str = "bilinear", | |
batch_size: int = 1, | |
ensembling_kwargs: Optional[Dict[str, Any]] = None, | |
latents: Optional[Union[torch.Tensor, List[torch.Tensor]]] = None, | |
prompt_embeds: Optional[torch.Tensor] = None, | |
negative_prompt_embeds: Optional[torch.Tensor] = None, | |
num_images_per_prompt: Optional[int] = 1, | |
generator: Optional[Union[torch.Generator, List[torch.Generator]]] = None, | |
controlnet_conditioning_scale: Union[float, List[float]] = 1.0, | |
output_type: str = "np", | |
output_uncertainty: bool = False, | |
output_latent: bool = False, | |
return_dict: bool = True, | |
): | |
""" | |
Function invoked when calling the pipeline. | |
Args: | |
image (`PIL.Image.Image`, `np.ndarray`, `torch.Tensor`, `List[PIL.Image.Image]`, `List[np.ndarray]`), | |
`List[torch.Tensor]`: An input image or images used as an input for the normals estimation task. For | |
arrays and tensors, the expected value range is between `[0, 1]`. Passing a batch of images is possible | |
by providing a four-dimensional array or a tensor. Additionally, a list of images of two- or | |
three-dimensional arrays or tensors can be passed. In the latter case, all list elements must have the | |
same width and height. | |
num_inference_steps (`int`, *optional*, defaults to `None`): | |
Number of denoising diffusion steps during inference. The default value `None` results in automatic | |
selection. The number of steps should be at least 10 with the full Marigold models, and between 1 and 4 | |
for Marigold-LCM models. | |
ensemble_size (`int`, defaults to `1`): | |
Number of ensemble predictions. Recommended values are 5 and higher for better precision, or 1 for | |
faster inference. | |
processing_resolution (`int`, *optional*, defaults to `None`): | |
Effective processing resolution. When set to `0`, matches the larger input image dimension. This | |
produces crisper predictions, but may also lead to the overall loss of global context. The default | |
value `None` resolves to the optimal value from the model config. | |
match_input_resolution (`bool`, *optional*, defaults to `True`): | |
When enabled, the output prediction is resized to match the input dimensions. When disabled, the longer | |
side of the output will equal to `processing_resolution`. | |
resample_method_input (`str`, *optional*, defaults to `"bilinear"`): | |
Resampling method used to resize input images to `processing_resolution`. The accepted values are: | |
`"nearest"`, `"nearest-exact"`, `"bilinear"`, `"bicubic"`, or `"area"`. | |
resample_method_output (`str`, *optional*, defaults to `"bilinear"`): | |
Resampling method used to resize output predictions to match the input resolution. The accepted values | |
are `"nearest"`, `"nearest-exact"`, `"bilinear"`, `"bicubic"`, or `"area"`. | |
batch_size (`int`, *optional*, defaults to `1`): | |
Batch size; only matters when setting `ensemble_size` or passing a tensor of images. | |
ensembling_kwargs (`dict`, *optional*, defaults to `None`) | |
Extra dictionary with arguments for precise ensembling control. The following options are available: | |
- reduction (`str`, *optional*, defaults to `"closest"`): Defines the ensembling function applied in | |
every pixel location, can be either `"closest"` or `"mean"`. | |
latents (`torch.Tensor`, *optional*, defaults to `None`): | |
Latent noise tensors to replace the random initialization. These can be taken from the previous | |
function call's output. | |
generator (`torch.Generator`, or `List[torch.Generator]`, *optional*, defaults to `None`): | |
Random number generator object to ensure reproducibility. | |
output_type (`str`, *optional*, defaults to `"np"`): | |
Preferred format of the output's `prediction` and the optional `uncertainty` fields. The accepted | |
values are: `"np"` (numpy array) or `"pt"` (torch tensor). | |
output_uncertainty (`bool`, *optional*, defaults to `False`): | |
When enabled, the output's `uncertainty` field contains the predictive uncertainty map, provided that | |
the `ensemble_size` argument is set to a value above 2. | |
output_latent (`bool`, *optional*, defaults to `False`): | |
When enabled, the output's `latent` field contains the latent codes corresponding to the predictions | |
within the ensemble. These codes can be saved, modified, and used for subsequent calls with the | |
`latents` argument. | |
return_dict (`bool`, *optional*, defaults to `True`): | |
Whether or not to return a [`~pipelines.marigold.MarigoldDepthOutput`] instead of a plain tuple. | |
Examples: | |
Returns: | |
[`~pipelines.marigold.MarigoldNormalsOutput`] or `tuple`: | |
If `return_dict` is `True`, [`~pipelines.marigold.MarigoldNormalsOutput`] is returned, otherwise a | |
`tuple` is returned where the first element is the prediction, the second element is the uncertainty | |
(or `None`), and the third is the latent (or `None`). | |
""" | |
# 0. Resolving variables. | |
device = self._execution_device | |
dtype = self.dtype | |
# Model-specific optimal default values leading to fast and reasonable results. | |
if num_inference_steps is None: | |
num_inference_steps = self.default_denoising_steps | |
if processing_resolution is None: | |
processing_resolution = self.default_processing_resolution | |
image, padding, original_resolution = self.image_processor.preprocess( | |
image, processing_resolution, resample_method_input, device, dtype | |
) # [N,3,PPH,PPW] | |
image_latent, gaus_noise = self.prepare_latents( | |
image, latents, generator, ensemble_size, batch_size | |
) # [N,4,h,w], [N,4,h,w] | |
# 0. X_start latent obtain | |
predictor = self.x_start_pipeline(image, latents=gaus_noise, | |
processing_resolution=processing_resolution, skip_preprocess=True) | |
x_start_latent = predictor.latent | |
# 1. Check inputs. | |
num_images = self.check_inputs( | |
image, | |
num_inference_steps, | |
ensemble_size, | |
processing_resolution, | |
resample_method_input, | |
resample_method_output, | |
batch_size, | |
ensembling_kwargs, | |
latents, | |
generator, | |
output_type, | |
output_uncertainty, | |
) | |
# 2. Prepare empty text conditioning. | |
# Model invocation: self.tokenizer, self.text_encoder. | |
if self.empty_text_embedding is None: | |
prompt = "" | |
text_inputs = self.tokenizer( | |
prompt, | |
padding="do_not_pad", | |
max_length=self.tokenizer.model_max_length, | |
truncation=True, | |
return_tensors="pt", | |
) | |
text_input_ids = text_inputs.input_ids.to(device) | |
self.empty_text_embedding = self.text_encoder(text_input_ids)[0] # [1,2,1024] | |
# 3. prepare prompt | |
if self.prompt_embeds is None: | |
prompt_embeds, negative_prompt_embeds = self.encode_prompt( | |
self.prompt, | |
device, | |
num_images_per_prompt, | |
False, | |
negative_prompt, | |
prompt_embeds=prompt_embeds, | |
negative_prompt_embeds=None, | |
lora_scale=None, | |
clip_skip=None, | |
) | |
self.prompt_embeds = prompt_embeds | |
self.negative_prompt_embeds = negative_prompt_embeds | |
# 5. dino guider features obtaining | |
## TODO different case-1 | |
dino_features = self.prior(image) | |
dino_features = self.dino_controlnet.dino_controlnet_cond_embedding(dino_features) | |
dino_features = self.match_noisy(dino_features, x_start_latent) | |
del ( | |
image, | |
) | |
# 7. denoise sampling, using heuritic sampling proposed by Ye. | |
t_start = self.x_start_pipeline.t_start | |
self.scheduler.set_timesteps(num_inference_steps, t_start=t_start,device=device) | |
cond_scale =controlnet_conditioning_scale | |
pred_latent = x_start_latent | |
cur_step = 0 | |
# dino controlnet | |
dino_down_block_res_samples, dino_mid_block_res_sample = self.dino_controlnet( | |
dino_features.detach(), | |
0, # not depend on time steps | |
encoder_hidden_states=self.prompt_embeds, | |
conditioning_scale=cond_scale, | |
guess_mode=False, | |
return_dict=False, | |
) | |
assert dino_mid_block_res_sample == None | |
pred_latents = [] | |
last_pred_latent = pred_latent | |
for (t, prev_t) in self.progress_bar(zip(self.scheduler.timesteps,self.scheduler.prev_timesteps), leave=False, desc="Diffusion steps..."): | |
_dino_down_block_res_samples = [dino_down_block_res_sample for dino_down_block_res_sample in dino_down_block_res_samples] # copy, avoid repeat quiery | |
# controlnet | |
down_block_res_samples, mid_block_res_sample = self.controlnet( | |
image_latent.detach(), | |
t, | |
encoder_hidden_states=self.prompt_embeds, | |
conditioning_scale=cond_scale, | |
guess_mode=False, | |
return_dict=False, | |
) | |
# SG-DRN | |
noise = self.dino_unet_forward( | |
self.unet, | |
pred_latent, | |
t, | |
encoder_hidden_states=self.prompt_embeds, | |
down_block_additional_residuals=down_block_res_samples, | |
mid_block_additional_residual=mid_block_res_sample, | |
dino_down_block_additional_residuals= _dino_down_block_res_samples, | |
return_dict=False, | |
)[0] # [B,4,h,w] | |
pred_latents.append(noise) | |
# ddim steps | |
out = self.scheduler.step( | |
noise, t, prev_t, pred_latent, gaus_noise = gaus_noise, generator=generator, cur_step=cur_step+1 # NOTE that cur_step dirs to next_step | |
)# [B,4,h,w] | |
pred_latent = out.prev_sample | |
cur_step += 1 | |
del ( | |
image_latent, | |
dino_features, | |
) | |
pred_latent = pred_latents[-1] # using x0 | |
# decoder | |
prediction = self.decode_prediction(pred_latent) | |
prediction = self.image_processor.unpad_image(prediction, padding) # [N*E,3,PH,PW] | |
prediction = self.image_processor.resize_antialias(prediction, original_resolution, resample_method_output, is_aa=False) # [N,3,H,W] | |
if match_input_resolution: | |
prediction = self.image_processor.resize_antialias( | |
prediction, original_resolution, resample_method_output, is_aa=False | |
) # [N,3,H,W] | |
if match_input_resolution: | |
prediction = self.image_processor.resize_antialias( | |
prediction, original_resolution, resample_method_output, is_aa=False | |
) # [N,3,H,W] | |
prediction = self.normalize_normals(prediction) # [N,3,H,W] | |
if output_type == "np": | |
prediction = self.image_processor.pt_to_numpy(prediction) # [N,H,W,3] | |
prediction = prediction.clip(min=-1, max=1) | |
# 11. Offload all models | |
self.maybe_free_model_hooks() | |
return StableNormalOutput( | |
prediction=prediction, | |
latent=pred_latent, | |
gaus_noise=gaus_noise | |
) | |
# Copied from diffusers.pipelines.marigold.pipeline_marigold_depth.MarigoldDepthPipeline.prepare_latents | |
def prepare_latents( | |
self, | |
image: torch.Tensor, | |
latents: Optional[torch.Tensor], | |
generator: Optional[torch.Generator], | |
ensemble_size: int, | |
batch_size: int, | |
) -> Tuple[torch.Tensor, torch.Tensor]: | |
def retrieve_latents(encoder_output): | |
if hasattr(encoder_output, "latent_dist"): | |
return encoder_output.latent_dist.mode() | |
elif hasattr(encoder_output, "latents"): | |
return encoder_output.latents | |
else: | |
raise AttributeError("Could not access latents of provided encoder_output") | |
image_latent = torch.cat( | |
[ | |
retrieve_latents(self.vae.encode(image[i : i + batch_size])) | |
for i in range(0, image.shape[0], batch_size) | |
], | |
dim=0, | |
) # [N,4,h,w] | |
image_latent = image_latent * self.vae.config.scaling_factor | |
image_latent = image_latent.repeat_interleave(ensemble_size, dim=0) # [N*E,4,h,w] | |
pred_latent = latents | |
if pred_latent is None: | |
pred_latent = randn_tensor( | |
image_latent.shape, | |
generator=generator, | |
device=image_latent.device, | |
dtype=image_latent.dtype, | |
) # [N*E,4,h,w] | |
return image_latent, pred_latent | |
def decode_prediction(self, pred_latent: torch.Tensor) -> torch.Tensor: | |
if pred_latent.dim() != 4 or pred_latent.shape[1] != self.vae.config.latent_channels: | |
raise ValueError( | |
f"Expecting 4D tensor of shape [B,{self.vae.config.latent_channels},H,W]; got {pred_latent.shape}." | |
) | |
prediction = self.vae.decode(pred_latent / self.vae.config.scaling_factor, return_dict=False)[0] # [B,3,H,W] | |
return prediction # [B,3,H,W] | |
def normalize_normals(normals: torch.Tensor, eps: float = 1e-6) -> torch.Tensor: | |
if normals.dim() != 4 or normals.shape[1] != 3: | |
raise ValueError(f"Expecting 4D tensor of shape [B,3,H,W]; got {normals.shape}.") | |
norm = torch.norm(normals, dim=1, keepdim=True) | |
normals /= norm.clamp(min=eps) | |
return normals | |
def match_noisy(dino, noisy): | |
_, __, dino_h, dino_w = dino.shape | |
_, __, h, w = noisy.shape | |
if h == dino_h and w == dino_w: | |
return dino | |
else: | |
return F.interpolate(dino, (h, w), mode='bilinear') | |
def dino_unet_forward( | |
self, # NOTE that repurpose to UNet | |
sample: torch.Tensor, | |
timestep: Union[torch.Tensor, float, int], | |
encoder_hidden_states: torch.Tensor, | |
class_labels: Optional[torch.Tensor] = None, | |
timestep_cond: Optional[torch.Tensor] = None, | |
attention_mask: Optional[torch.Tensor] = None, | |
cross_attention_kwargs: Optional[Dict[str, Any]] = None, | |
added_cond_kwargs: Optional[Dict[str, torch.Tensor]] = None, | |
down_block_additional_residuals: Optional[Tuple[torch.Tensor]] = None, | |
mid_block_additional_residual: Optional[torch.Tensor] = None, | |
dino_down_block_additional_residuals: Optional[torch.Tensor] = None, | |
down_intrablock_additional_residuals: Optional[Tuple[torch.Tensor]] = None, | |
encoder_attention_mask: Optional[torch.Tensor] = None, | |
return_dict: bool = True, | |
) -> Union[UNet2DConditionOutput, Tuple]: | |
r""" | |
The [`UNet2DConditionModel`] forward method. | |
Args: | |
sample (`torch.Tensor`): | |
The noisy input tensor with the following shape `(batch, channel, height, width)`. | |
timestep (`torch.Tensor` or `float` or `int`): The number of timesteps to denoise an input. | |
encoder_hidden_states (`torch.Tensor`): | |
The encoder hidden states with shape `(batch, sequence_length, feature_dim)`. | |
class_labels (`torch.Tensor`, *optional*, defaults to `None`): | |
Optional class labels for conditioning. Their embeddings will be summed with the timestep embeddings. | |
timestep_cond: (`torch.Tensor`, *optional*, defaults to `None`): | |
Conditional embeddings for timestep. If provided, the embeddings will be summed with the samples passed | |
through the `self.time_embedding` layer to obtain the timestep embeddings. | |
attention_mask (`torch.Tensor`, *optional*, defaults to `None`): | |
An attention mask of shape `(batch, key_tokens)` is applied to `encoder_hidden_states`. If `1` the mask | |
is kept, otherwise if `0` it is discarded. Mask will be converted into a bias, which adds large | |
negative values to the attention scores corresponding to "discard" tokens. | |
cross_attention_kwargs (`dict`, *optional*): | |
A kwargs dictionary that if specified is passed along to the `AttentionProcessor` as defined under | |
`self.processor` in | |
[diffusers.models.attention_processor](https://github.com/huggingface/diffusers/blob/main/src/diffusers/models/attention_processor.py). | |
added_cond_kwargs: (`dict`, *optional*): | |
A kwargs dictionary containing additional embeddings that if specified are added to the embeddings that | |
are passed along to the UNet blocks. | |
down_block_additional_residuals: (`tuple` of `torch.Tensor`, *optional*): | |
A tuple of tensors that if specified are added to the residuals of down unet blocks. | |
mid_block_additional_residual: (`torch.Tensor`, *optional*): | |
A tensor that if specified is added to the residual of the middle unet block. | |
down_intrablock_additional_residuals (`tuple` of `torch.Tensor`, *optional*): | |
additional residuals to be added within UNet down blocks, for example from T2I-Adapter side model(s) | |
encoder_attention_mask (`torch.Tensor`): | |
A cross-attention mask of shape `(batch, sequence_length)` is applied to `encoder_hidden_states`. If | |
`True` the mask is kept, otherwise if `False` it is discarded. Mask will be converted into a bias, | |
which adds large negative values to the attention scores corresponding to "discard" tokens. | |
return_dict (`bool`, *optional*, defaults to `True`): | |
Whether or not to return a [`~models.unets.unet_2d_condition.UNet2DConditionOutput`] instead of a plain | |
tuple. | |
Returns: | |
[`~models.unets.unet_2d_condition.UNet2DConditionOutput`] or `tuple`: | |
If `return_dict` is True, an [`~models.unets.unet_2d_condition.UNet2DConditionOutput`] is returned, | |
otherwise a `tuple` is returned where the first element is the sample tensor. | |
""" | |
# By default samples have to be AT least a multiple of the overall upsampling factor. | |
# The overall upsampling factor is equal to 2 ** (# num of upsampling layers). | |
# However, the upsampling interpolation output size can be forced to fit any upsampling size | |
# on the fly if necessary. | |
default_overall_up_factor = 2**self.num_upsamplers | |
# upsample size should be forwarded when sample is not a multiple of `default_overall_up_factor` | |
forward_upsample_size = False | |
upsample_size = None | |
for dim in sample.shape[-2:]: | |
if dim % default_overall_up_factor != 0: | |
# Forward upsample size to force interpolation output size. | |
forward_upsample_size = True | |
break | |
# ensure attention_mask is a bias, and give it a singleton query_tokens dimension | |
# expects mask of shape: | |
# [batch, key_tokens] | |
# adds singleton query_tokens dimension: | |
# [batch, 1, key_tokens] | |
# this helps to broadcast it as a bias over attention scores, which will be in one of the following shapes: | |
# [batch, heads, query_tokens, key_tokens] (e.g. torch sdp attn) | |
# [batch * heads, query_tokens, key_tokens] (e.g. xformers or classic attn) | |
if attention_mask is not None: | |
# assume that mask is expressed as: | |
# (1 = keep, 0 = discard) | |
# convert mask into a bias that can be added to attention scores: | |
# (keep = +0, discard = -10000.0) | |
attention_mask = (1 - attention_mask.to(sample.dtype)) * -10000.0 | |
attention_mask = attention_mask.unsqueeze(1) | |
# convert encoder_attention_mask to a bias the same way we do for attention_mask | |
if encoder_attention_mask is not None: | |
encoder_attention_mask = (1 - encoder_attention_mask.to(sample.dtype)) * -10000.0 | |
encoder_attention_mask = encoder_attention_mask.unsqueeze(1) | |
# 0. center input if necessary | |
if self.config.center_input_sample: | |
sample = 2 * sample - 1.0 | |
# 1. time | |
t_emb = self.get_time_embed(sample=sample, timestep=timestep) | |
emb = self.time_embedding(t_emb, timestep_cond) | |
aug_emb = None | |
class_emb = self.get_class_embed(sample=sample, class_labels=class_labels) | |
if class_emb is not None: | |
if self.config.class_embeddings_concat: | |
emb = torch.cat([emb, class_emb], dim=-1) | |
else: | |
emb = emb + class_emb | |
aug_emb = self.get_aug_embed( | |
emb=emb, encoder_hidden_states=encoder_hidden_states, added_cond_kwargs=added_cond_kwargs | |
) | |
if self.config.addition_embed_type == "image_hint": | |
aug_emb, hint = aug_emb | |
sample = torch.cat([sample, hint], dim=1) | |
emb = emb + aug_emb if aug_emb is not None else emb | |
if self.time_embed_act is not None: | |
emb = self.time_embed_act(emb) | |
encoder_hidden_states = self.process_encoder_hidden_states( | |
encoder_hidden_states=encoder_hidden_states, added_cond_kwargs=added_cond_kwargs | |
) | |
# 2. pre-process | |
sample = self.conv_in(sample) | |
# 2.5 GLIGEN position net | |
if cross_attention_kwargs is not None and cross_attention_kwargs.get("gligen", None) is not None: | |
cross_attention_kwargs = cross_attention_kwargs.copy() | |
gligen_args = cross_attention_kwargs.pop("gligen") | |
cross_attention_kwargs["gligen"] = {"objs": self.position_net(**gligen_args)} | |
# 3. down | |
# we're popping the `scale` instead of getting it because otherwise `scale` will be propagated | |
# to the internal blocks and will raise deprecation warnings. this will be confusing for our users. | |
if cross_attention_kwargs is not None: | |
cross_attention_kwargs = cross_attention_kwargs.copy() | |
lora_scale = cross_attention_kwargs.pop("scale", 1.0) | |
else: | |
lora_scale = 1.0 | |
if USE_PEFT_BACKEND: | |
# weight the lora layers by setting `lora_scale` for each PEFT layer | |
scale_lora_layers(self, lora_scale) | |
is_controlnet = mid_block_additional_residual is not None and down_block_additional_residuals is not None | |
# using new arg down_intrablock_additional_residuals for T2I-Adapters, to distinguish from controlnets | |
is_adapter = down_intrablock_additional_residuals is not None | |
# maintain backward compatibility for legacy usage, where | |
# T2I-Adapter and ControlNet both use down_block_additional_residuals arg | |
# but can only use one or the other | |
if not is_adapter and mid_block_additional_residual is None and down_block_additional_residuals is not None: | |
deprecate( | |
"T2I should not use down_block_additional_residuals", | |
"1.3.0", | |
"Passing intrablock residual connections with `down_block_additional_residuals` is deprecated \ | |
and will be removed in diffusers 1.3.0. `down_block_additional_residuals` should only be used \ | |
for ControlNet. Please make sure use `down_intrablock_additional_residuals` instead. ", | |
standard_warn=False, | |
) | |
down_intrablock_additional_residuals = down_block_additional_residuals | |
is_adapter = True | |
def residual_downforward( | |
self, hidden_states: torch.Tensor, temb: Optional[torch.Tensor] = None, | |
additional_residuals: Optional[torch.Tensor] = None, | |
*args, **kwargs, | |
) -> Tuple[torch.Tensor, Tuple[torch.Tensor, ...]]: | |
if len(args) > 0 or kwargs.get("scale", None) is not None: | |
deprecation_message = "The `scale` argument is deprecated and will be ignored. Please remove it, as passing it will raise an error in the future. `scale` should directly be passed while calling the underlying pipeline component i.e., via `cross_attention_kwargs`." | |
deprecate("scale", "1.0.0", deprecation_message) | |
output_states = () | |
for resnet in self.resnets: | |
if self.training and self.gradient_checkpointing: | |
def create_custom_forward(module): | |
def custom_forward(*inputs): | |
return module(*inputs) | |
return custom_forward | |
if is_torch_version(">=", "1.11.0"): | |
hidden_states = torch.utils.checkpoint.checkpoint( | |
create_custom_forward(resnet), hidden_states, temb, use_reentrant=False | |
) | |
else: | |
hidden_states = torch.utils.checkpoint.checkpoint( | |
create_custom_forward(resnet), hidden_states, temb | |
) | |
else: | |
hidden_states = resnet(hidden_states, temb) | |
hidden_states += additional_residuals.pop(0) | |
output_states = output_states + (hidden_states,) | |
if self.downsamplers is not None: | |
for downsampler in self.downsamplers: | |
hidden_states = downsampler(hidden_states) | |
hidden_states += additional_residuals.pop(0) | |
output_states = output_states + (hidden_states,) | |
return hidden_states, output_states | |
def residual_blockforward( | |
self, ## NOTE that repurpose to unet_blocks | |
hidden_states: torch.Tensor, | |
temb: Optional[torch.Tensor] = None, | |
encoder_hidden_states: Optional[torch.Tensor] = None, | |
attention_mask: Optional[torch.Tensor] = None, | |
cross_attention_kwargs: Optional[Dict[str, Any]] = None, | |
encoder_attention_mask: Optional[torch.Tensor] = None, | |
additional_residuals: Optional[torch.Tensor] = None, | |
) -> Tuple[torch.Tensor, Tuple[torch.Tensor, ...]]: | |
if cross_attention_kwargs is not None: | |
if cross_attention_kwargs.get("scale", None) is not None: | |
logger.warning("Passing `scale` to `cross_attention_kwargs` is deprecated. `scale` will be ignored.") | |
output_states = () | |
blocks = list(zip(self.resnets, self.attentions)) | |
for i, (resnet, attn) in enumerate(blocks): | |
if self.training and self.gradient_checkpointing: | |
def create_custom_forward(module, return_dict=None): | |
def custom_forward(*inputs): | |
if return_dict is not None: | |
return module(*inputs, return_dict=return_dict) | |
else: | |
return module(*inputs) | |
return custom_forward | |
ckpt_kwargs: Dict[str, Any] = {"use_reentrant": False} if is_torch_version(">=", "1.11.0") else {} | |
hidden_states = torch.utils.checkpoint.checkpoint( | |
create_custom_forward(resnet), | |
hidden_states, | |
temb, | |
**ckpt_kwargs, | |
) | |
hidden_states = attn( | |
hidden_states, | |
encoder_hidden_states=encoder_hidden_states, | |
cross_attention_kwargs=cross_attention_kwargs, | |
attention_mask=attention_mask, | |
encoder_attention_mask=encoder_attention_mask, | |
return_dict=False, | |
)[0] | |
else: | |
hidden_states = resnet(hidden_states, temb) | |
hidden_states = attn( | |
hidden_states, | |
encoder_hidden_states=encoder_hidden_states, | |
cross_attention_kwargs=cross_attention_kwargs, | |
attention_mask=attention_mask, | |
encoder_attention_mask=encoder_attention_mask, | |
return_dict=False, | |
)[0] | |
hidden_states += additional_residuals.pop(0) | |
output_states = output_states + (hidden_states,) | |
if self.downsamplers is not None: | |
for downsampler in self.downsamplers: | |
hidden_states = downsampler(hidden_states) | |
hidden_states += additional_residuals.pop(0) | |
output_states = output_states + (hidden_states,) | |
return hidden_states, output_states | |
down_intrablock_additional_residuals = dino_down_block_additional_residuals | |
sample += down_intrablock_additional_residuals.pop(0) | |
down_block_res_samples = (sample,) | |
for downsample_block in self.down_blocks: | |
if hasattr(downsample_block, "has_cross_attention") and downsample_block.has_cross_attention: | |
sample, res_samples = residual_blockforward( | |
downsample_block, | |
hidden_states=sample, | |
temb=emb, | |
encoder_hidden_states=encoder_hidden_states, | |
attention_mask=attention_mask, | |
cross_attention_kwargs=cross_attention_kwargs, | |
encoder_attention_mask=encoder_attention_mask, | |
additional_residuals = down_intrablock_additional_residuals, | |
) | |
else: | |
sample, res_samples = residual_downforward( | |
downsample_block, | |
hidden_states=sample, | |
temb=emb, | |
additional_residuals = down_intrablock_additional_residuals, | |
) | |
down_block_res_samples += res_samples | |
if is_controlnet: | |
new_down_block_res_samples = () | |
for down_block_res_sample, down_block_additional_residual in zip( | |
down_block_res_samples, down_block_additional_residuals | |
): | |
down_block_res_sample = down_block_res_sample + down_block_additional_residual | |
new_down_block_res_samples = new_down_block_res_samples + (down_block_res_sample,) | |
down_block_res_samples = new_down_block_res_samples | |
# 4. mid | |
if self.mid_block is not None: | |
if hasattr(self.mid_block, "has_cross_attention") and self.mid_block.has_cross_attention: | |
sample = self.mid_block( | |
sample, | |
emb, | |
encoder_hidden_states=encoder_hidden_states, | |
attention_mask=attention_mask, | |
cross_attention_kwargs=cross_attention_kwargs, | |
encoder_attention_mask=encoder_attention_mask, | |
) | |
else: | |
sample = self.mid_block(sample, emb) | |
# To support T2I-Adapter-XL | |
if ( | |
is_adapter | |
and len(down_intrablock_additional_residuals) > 0 | |
and sample.shape == down_intrablock_additional_residuals[0].shape | |
): | |
sample += down_intrablock_additional_residuals.pop(0) | |
if is_controlnet: | |
sample = sample + mid_block_additional_residual | |
# 5. up | |
for i, upsample_block in enumerate(self.up_blocks): | |
is_final_block = i == len(self.up_blocks) - 1 | |
res_samples = down_block_res_samples[-len(upsample_block.resnets) :] | |
down_block_res_samples = down_block_res_samples[: -len(upsample_block.resnets)] | |
# if we have not reached the final block and need to forward the | |
# upsample size, we do it here | |
if not is_final_block and forward_upsample_size: | |
upsample_size = down_block_res_samples[-1].shape[2:] | |
if hasattr(upsample_block, "has_cross_attention") and upsample_block.has_cross_attention: | |
sample = upsample_block( | |
hidden_states=sample, | |
temb=emb, | |
res_hidden_states_tuple=res_samples, | |
encoder_hidden_states=encoder_hidden_states, | |
cross_attention_kwargs=cross_attention_kwargs, | |
upsample_size=upsample_size, | |
attention_mask=attention_mask, | |
encoder_attention_mask=encoder_attention_mask, | |
) | |
else: | |
sample = upsample_block( | |
hidden_states=sample, | |
temb=emb, | |
res_hidden_states_tuple=res_samples, | |
upsample_size=upsample_size, | |
) | |
# 6. post-process | |
if self.conv_norm_out: | |
sample = self.conv_norm_out(sample) | |
sample = self.conv_act(sample) | |
sample = self.conv_out(sample) | |
if USE_PEFT_BACKEND: | |
# remove `lora_scale` from each PEFT layer | |
unscale_lora_layers(self, lora_scale) | |
if not return_dict: | |
return (sample,) | |
return UNet2DConditionOutput(sample=sample) | |
def ensemble_normals( | |
normals: torch.Tensor, output_uncertainty: bool, reduction: str = "closest" | |
) -> Tuple[torch.Tensor, Optional[torch.Tensor]]: | |
""" | |
Ensembles the normals maps represented by the `normals` tensor with expected shape `(B, 3, H, W)`, where B is | |
the number of ensemble members for a given prediction of size `(H x W)`. | |
Args: | |
normals (`torch.Tensor`): | |
Input ensemble normals maps. | |
output_uncertainty (`bool`, *optional*, defaults to `False`): | |
Whether to output uncertainty map. | |
reduction (`str`, *optional*, defaults to `"closest"`): | |
Reduction method used to ensemble aligned predictions. The accepted values are: `"closest"` and | |
`"mean"`. | |
Returns: | |
A tensor of aligned and ensembled normals maps with shape `(1, 3, H, W)` and optionally a tensor of | |
uncertainties of shape `(1, 1, H, W)`. | |
""" | |
if normals.dim() != 4 or normals.shape[1] != 3: | |
raise ValueError(f"Expecting 4D tensor of shape [B,3,H,W]; got {normals.shape}.") | |
if reduction not in ("closest", "mean"): | |
raise ValueError(f"Unrecognized reduction method: {reduction}.") | |
mean_normals = normals.mean(dim=0, keepdim=True) # [1,3,H,W] | |
mean_normals = MarigoldNormalsPipeline.normalize_normals(mean_normals) # [1,3,H,W] | |
sim_cos = (mean_normals * normals).sum(dim=1, keepdim=True) # [E,1,H,W] | |
sim_cos = sim_cos.clamp(-1, 1) # required to avoid NaN in uncertainty with fp16 | |
uncertainty = None | |
if output_uncertainty: | |
uncertainty = sim_cos.arccos() # [E,1,H,W] | |
uncertainty = uncertainty.mean(dim=0, keepdim=True) / np.pi # [1,1,H,W] | |
if reduction == "mean": | |
return mean_normals, uncertainty # [1,3,H,W], [1,1,H,W] | |
closest_indices = sim_cos.argmax(dim=0, keepdim=True) # [1,1,H,W] | |
closest_indices = closest_indices.repeat(1, 3, 1, 1) # [1,3,H,W] | |
closest_normals = torch.gather(normals, 0, closest_indices) # [1,3,H,W] | |
return closest_normals, uncertainty # [1,3,H,W], [1,1,H,W] | |
# Copied from diffusers.pipelines.stable_diffusion.pipeline_stable_diffusion.retrieve_timesteps | |
def retrieve_timesteps( | |
scheduler, | |
num_inference_steps: Optional[int] = None, | |
device: Optional[Union[str, torch.device]] = None, | |
timesteps: Optional[List[int]] = None, | |
sigmas: Optional[List[float]] = None, | |
**kwargs, | |
): | |
""" | |
Calls the scheduler's `set_timesteps` method and retrieves timesteps from the scheduler after the call. Handles | |
custom timesteps. Any kwargs will be supplied to `scheduler.set_timesteps`. | |
Args: | |
scheduler (`SchedulerMixin`): | |
The scheduler to get timesteps from. | |
num_inference_steps (`int`): | |
The number of diffusion steps used when generating samples with a pre-trained model. If used, `timesteps` | |
must be `None`. | |
device (`str` or `torch.device`, *optional*): | |
The device to which the timesteps should be moved to. If `None`, the timesteps are not moved. | |
timesteps (`List[int]`, *optional*): | |
Custom timesteps used to override the timestep spacing strategy of the scheduler. If `timesteps` is passed, | |
`num_inference_steps` and `sigmas` must be `None`. | |
sigmas (`List[float]`, *optional*): | |
Custom sigmas used to override the timestep spacing strategy of the scheduler. If `sigmas` is passed, | |
`num_inference_steps` and `timesteps` must be `None`. | |
Returns: | |
`Tuple[torch.Tensor, int]`: A tuple where the first element is the timestep schedule from the scheduler and the | |
second element is the number of inference steps. | |
""" | |
if timesteps is not None and sigmas is not None: | |
raise ValueError("Only one of `timesteps` or `sigmas` can be passed. Please choose one to set custom values") | |
if timesteps is not None: | |
accepts_timesteps = "timesteps" in set(inspect.signature(scheduler.set_timesteps).parameters.keys()) | |
if not accepts_timesteps: | |
raise ValueError( | |
f"The current scheduler class {scheduler.__class__}'s `set_timesteps` does not support custom" | |
f" timestep schedules. Please check whether you are using the correct scheduler." | |
) | |
scheduler.set_timesteps(timesteps=timesteps, device=device, **kwargs) | |
timesteps = scheduler.timesteps | |
num_inference_steps = len(timesteps) | |
elif sigmas is not None: | |
accept_sigmas = "sigmas" in set(inspect.signature(scheduler.set_timesteps).parameters.keys()) | |
if not accept_sigmas: | |
raise ValueError( | |
f"The current scheduler class {scheduler.__class__}'s `set_timesteps` does not support custom" | |
f" sigmas schedules. Please check whether you are using the correct scheduler." | |
) | |
scheduler.set_timesteps(sigmas=sigmas, device=device, **kwargs) | |
timesteps = scheduler.timesteps | |
num_inference_steps = len(timesteps) | |
else: | |
scheduler.set_timesteps(num_inference_steps, device=device, **kwargs) | |
timesteps = scheduler.timesteps | |
return timesteps, num_inference_steps |