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# Copyright 2024 Anton Obukhov, Bingxin Ke, ETH Zurich and 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.
# --------------------------------------------------------------------------
# If you find this code useful, we kindly ask you to cite our paper in your work.
# Please find bibtex at: https://github.com/prs-eth/Marigold#-citation
# More information about the method can be found at https://marigoldmonodepth.github.io
# --------------------------------------------------------------------------


import math
from typing import Dict, Union, Tuple

import matplotlib
import numpy as np
import torch
from PIL import Image
from scipy.optimize import minimize
from torch.utils.data import DataLoader, TensorDataset
from tqdm.auto import tqdm
from transformers import CLIPTextModel, CLIPTokenizer

from diffusers import (
    AutoencoderKL,
    DDIMScheduler,
    DiffusionPipeline,
    UNet2DConditionModel,
)
from diffusers.utils import BaseOutput, check_min_version


# Will error if the minimal version of diffusers is not installed. Remove at your own risks.
check_min_version("0.27.0.dev0")

def get_save_width_height(input_image_size, depth_pred):
  orig_width, orig_height = input_image_size
  depth_height, depth_width = depth_pred.shape[:2]

  print("Inside pipe!")
  print("Depth size: {}x{}".format(depth_width, depth_height))

  # Use height
  ratio = orig_height / depth_height
  new_width = depth_width * ratio
  if new_width <= orig_width:
      save_width = int(new_width)
      save_height = int(orig_height)
  else:
      ratio = orig_width / depth_width
      new_height = depth_height * ratio
      if new_height <= orig_height:
          save_width = int(orig_width)
          save_height = int(new_height)
      else:
          print("WTF IS THIS??")
          return None, None

  print("New depth size: {}x{}".format(save_width, save_height))
  return save_width, save_height
          
class MarigoldDepthConsistencyOutput(BaseOutput):
    """
    Output class for Marigold monocular depth prediction pipeline.

    Args:
        depth_np (`np.ndarray`):
            Predicted depth map, with depth values in the range of [0, 1].
        depth_colored (`None` or `PIL.Image.Image`):
            Colorized depth map, with the shape of [3, H, W] and values in [0, 1].
        depth_latent (`torch.Tensor`):
            Depth map's latent, with the shape of [4, h, w].
        uncertainty (`None` or `np.ndarray`):
            Uncalibrated uncertainty(MAD, median absolute deviation) coming from ensembling.
    """

    depth_np: np.ndarray
    depth_colored: Union[None, Image.Image]
    depth_latent: torch.Tensor
    uncertainty: Union[None, np.ndarray]


class MarigoldDepthConsistencyPipeline(DiffusionPipeline):
    """
    Pipeline for monocular depth estimation using Marigold: https://marigoldmonodepth.github.io.

    This model inherits from [`DiffusionPipeline`]. Check the superclass documentation for the generic methods the
    library implements for all the pipelines (such as downloading or saving, running on a particular device, etc.)

    Args:
        unet (`UNet2DConditionModel`):
            Conditional U-Net to denoise the depth latent, conditioned on image latent.
        vae (`AutoencoderKL`):
            Variational Auto-Encoder (VAE) Model to encode and decode images and depth maps
            to and from latent representations.
        scheduler (`DDIMScheduler`):
            A scheduler to be used in combination with `unet` to denoise the encoded image latents.
        text_encoder (`CLIPTextModel`):
            Text-encoder, for empty text embedding.
        tokenizer (`CLIPTokenizer`):
            CLIP tokenizer.
    """

    rgb_latent_scale_factor = 0.18215
    depth_latent_scale_factor = 0.18215

    def __init__(
        self,
        unet: UNet2DConditionModel,
        vae: AutoencoderKL,
        scheduler: DDIMScheduler,
        text_encoder: CLIPTextModel,
        tokenizer: CLIPTokenizer,
    ):
        super().__init__()

        self.register_modules(
            unet=unet,
            vae=vae,
            scheduler=scheduler,
            text_encoder=text_encoder,
            tokenizer=tokenizer,
        )

        self.empty_text_embed = None

    @torch.no_grad()
    def __call__(
        self,
        input_image: Image,
        denoising_steps: int = 1,
        ensemble_size: int = 1,
        processing_res: int = 768,
        match_input_res: bool = True,
        batch_size: int = 0,
        depth_latent_init: torch.Tensor = None,
        depth_latent_init_strength: float = 0.1,
        seed: int = None,
        color_map: str = "Spectral",
        show_progress_bar: bool = True,
        ensemble_kwargs: Dict = None,
    ) -> MarigoldDepthConsistencyOutput:
        """
        Function invoked when calling the pipeline.

        Args:
            input_image (`Image`):
                Input RGB (or gray-scale) image.
            processing_res (`int`, *optional*, defaults to `768`):
                Maximum resolution of processing.
                If set to 0: will not resize at all.
            match_input_res (`bool`, *optional*, defaults to `True`):
                Resize depth prediction to match input resolution.
                Only valid if `limit_input_res` is not None.
            denoising_steps (`int`, *optional*, defaults to `1`):
                Number of diffusion denoising steps (consistency) during inference.
            ensemble_size (`int`, *optional*, defaults to `1`):
                Number of predictions to be ensembled.
            batch_size (`int`, *optional*, defaults to `0`):
                Inference batch size, no bigger than `num_ensemble`.
                If set to 0, the script will automatically decide the proper batch size.
            depth_latent_init (`torch.Tensor`, *optional*, defaults to `None`):
                Initial depth map latent for better temporal consistency.
            depth_latent_init_strength (`float`, *optional*, defaults to `0.1`)
                Degree of initial depth latent influence, must be between 0 and 1.
            seed (`int`, *optional*, defaults to `None`)
                Reproducibility seed.
            show_progress_bar (`bool`, *optional*, defaults to `True`):
                Display a progress bar of diffusion denoising.
            color_map (`str`, *optional*, defaults to `"Spectral"`, pass `None` to skip colorized depth map generation):
                Colormap used to colorize the depth map.
            ensemble_kwargs (`dict`, *optional*, defaults to `None`):
                Arguments for detailed ensembling settings.
        Returns:
            `MarigoldDepthConsistencyOutput`: Output class for Marigold monocular depth prediction pipeline, including:
            - **depth_np** (`np.ndarray`) Predicted depth map, with depth values in the range of [0, 1]
            - **depth_colored** (`None` or `PIL.Image.Image`) Colorized depth map, with the shape of [3, H, W] and
                    values in [0, 1]. None if `color_map` is `None`
            - **depth_latent** (`torch.Tensor`) Predicted depth map latent
            - **uncertainty** (`None` or `np.ndarray`) Uncalibrated uncertainty(MAD, median absolute deviation)
                    coming from ensembling. None if `ensemble_size = 1`
        """

        device = self.device
        input_size = input_image.size

        if not match_input_res:
            assert (
                processing_res is not None
            ), "Value error: `resize_output_back` is only valid with "
        assert processing_res >= 0, "Value error: `processing_res` must be non-negative"
        assert (
            1 <= denoising_steps <= 10
        ), "Value error: This model degrades with large number of steps"
        assert ensemble_size >= 1

        # ----------------- Image Preprocess -----------------
        # Resize image
        if processing_res > 0:
            input_image = self.resize_max_res(
                input_image, max_edge_resolution=processing_res
            )
        # Convert the image to RGB, to 1.remove the alpha channel 2.convert B&W to 3-channel
        input_image = input_image.convert("RGB")
        image = np.asarray(input_image)

        # Normalize rgb values
        rgb = np.transpose(image, (2, 0, 1))  # [H, W, rgb] -> [rgb, H, W]
        rgb_norm = rgb / 255.0 * 2.0 - 1.0  # [0, 255] -> [-1, 1]
        rgb_norm = torch.from_numpy(rgb_norm).to(self.dtype)
        rgb_norm = rgb_norm.to(device)
        assert rgb_norm.min() >= -1.0 and rgb_norm.max() <= 1.0

        # ----------------- Predicting depth -----------------
        # Batch repeated input image
        duplicated_rgb = torch.stack([rgb_norm] * ensemble_size)
        batch_dataset = TensorDataset(duplicated_rgb)
        if batch_size > 0:
            _bs = batch_size
        else:
            _bs = self._find_batch_size(
                ensemble_size=ensemble_size,
                input_res=max(duplicated_rgb.shape[-2:]),
                dtype=self.dtype,
            )

        batch_loader = DataLoader(batch_dataset, batch_size=_bs, shuffle=False)

        # Predict depth maps (batched)
        depth_pred_ls = []
        if show_progress_bar:
            iterable = tqdm(
                batch_loader, desc=" " * 2 + "Inference batches", leave=False
            )
        else:
            iterable = batch_loader
        depth_latent = None
        for batch in iterable:
            (batched_img,) = batch
            depth_pred_raw, depth_latent = self.single_infer(
                rgb_in=batched_img,
                num_inference_steps=denoising_steps,
                depth_latent_init=depth_latent_init,
                depth_latent_init_strength=depth_latent_init_strength,
                seed=seed,
                show_pbar=show_progress_bar,
            )
            depth_pred_ls.append(depth_pred_raw.detach())
        depth_preds = torch.concat(depth_pred_ls, dim=0).squeeze()
        torch.cuda.empty_cache()  # clear vram cache for ensembling

        # ----------------- Test-time ensembling -----------------
        if ensemble_size > 1:
            depth_pred, pred_uncert = self.ensemble_depths(
                depth_preds, **(ensemble_kwargs or {})
            )
        else:
            depth_pred = depth_preds
            pred_uncert = None

        # ----------------- Post processing -----------------
        # Scale prediction to [0, 1]
        min_d = torch.min(depth_pred)
        max_d = torch.max(depth_pred)
        depth_pred = (depth_pred - min_d) / (max_d - min_d)
        if ensemble_size > 1:
            depth_latent = self._encode_depth(2 * depth_pred - 1)

        # Convert to numpy
        depth_pred = depth_pred.cpu().numpy().astype(np.float32)

        # Resize back to original resolution
        if match_input_res:
            save_width, save_height = get_save_width_height(input_size, depth_pred)
            pred_img = Image.fromarray(depth_pred)
            pred_img = pred_img.resize((save_width, save_height))
            depth_pred = np.asarray(pred_img)

        # Clip output range
        depth_pred = depth_pred.clip(0, 1)

        # Colorize
        if color_map is not None:
            depth_colored = self.colorize_depth_maps(
                depth_pred, 0, 1, cmap=color_map
            ).squeeze()  # [3, H, W], value in (0, 1)
            depth_colored = (depth_colored * 255).astype(np.uint8)
            depth_colored_hwc = self.chw2hwc(depth_colored)
            depth_colored_img = Image.fromarray(depth_colored_hwc)
        else:
            depth_colored_img = None
        return MarigoldDepthConsistencyOutput(
            depth_np=depth_pred,
            depth_colored=depth_colored_img,
            depth_latent=depth_latent,
            uncertainty=pred_uncert,
        )

    def _encode_empty_text(self):
        """
        Encode text embedding for empty prompt.
        """
        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(self.text_encoder.device)
        self.empty_text_embed = self.text_encoder(text_input_ids)[0].to(self.dtype)

    @torch.no_grad()
    def single_infer(
        self,
        rgb_in: torch.Tensor,
        num_inference_steps: int,
        depth_latent_init: torch.Tensor,
        depth_latent_init_strength: float,
        seed: int,
        show_pbar: bool,
    ) -> Tuple[torch.Tensor, torch.Tensor]:
        """
        Perform an individual depth prediction without ensembling.

        Args:
            rgb_in (`torch.Tensor`):
                Input RGB image.
            num_inference_steps (`int`):
                Number of diffusion denoisign steps (DDIM) during inference.
            depth_latent_init (`torch.Tensor`, `optional`):
                Initial depth latent
            depth_latent_init_strength (`float`, `optional`):
                Degree of initial depth latent influence, must be between 0 and 1
            seed (`int`, *optional*, defaults to `None`)
                Reproducibility seed.
            show_pbar (`bool`):
                Display a progress bar of diffusion denoising.
        Returns:
            `torch.Tensor`: Predicted depth map.
        """
        device = rgb_in.device

        # Set timesteps
        self.scheduler.set_timesteps(num_inference_steps, device=device)
        timesteps = self.scheduler.timesteps  # [T]

        # Encode image
        rgb_latent = self._encode_rgb(rgb_in)

        # Initial depth map (noise)
        if seed is None:
            rng = None
        else:
            rng = torch.Generator(device=device)
            rng.manual_seed(seed)
        depth_latent = torch.randn(
            rgb_latent.shape, device=device, dtype=self.dtype, generator=rng
        )  # [B, 4, h, w]

        if depth_latent_init is not None:
            assert 0.0 <= depth_latent_init_strength <= 1.0
            assert (
                depth_latent_init.dim() == 4
                and depth_latent.dim() == 4
                and depth_latent_init.shape[0] == 1
            )
            if depth_latent.shape[0] != 1:
                depth_latent_init = depth_latent_init.repeat(
                    depth_latent.shape[0], 1, 1, 1
                )
            depth_latent *= 1.0 - depth_latent_init_strength
            depth_latent = depth_latent + depth_latent_init * depth_latent_init_strength

        # Batched empty text embedding
        if self.empty_text_embed is None:
            self._encode_empty_text()
        batch_empty_text_embed = self.empty_text_embed.repeat(
            (rgb_latent.shape[0], 1, 1)
        )  # [B, 2, 1024]

        # Denoising loop
        if show_pbar:
            iterable = tqdm(
                enumerate(timesteps),
                total=len(timesteps),
                leave=False,
                desc=" " * 4 + "Diffusion denoising",
            )
        else:
            iterable = enumerate(timesteps)

        for i, t in iterable:
            unet_input = torch.cat(
                [rgb_latent, depth_latent], dim=1
            )  # this order is important

            # predict the noise residual
            noise_pred = self.unet(
                unet_input, t, encoder_hidden_states=batch_empty_text_embed
            ).sample  # [B, 4, h, w]

            # compute the previous noisy sample x_t -> x_t-1
            depth_latent = self.scheduler.step(noise_pred, t, depth_latent).prev_sample

        depth = self._decode_depth(depth_latent)

        # clip prediction
        depth = torch.clip(depth, -1.0, 1.0)
        # shift to [0, 1]
        depth = (depth + 1.0) / 2.0

        return depth, depth_latent

    def _encode_depth(self, depth_in: torch.Tensor) -> torch.Tensor:
        """
        Encode depth image into latent.

        Args:
            depth_in (`torch.Tensor`):
                Input Depth image to be encoded.

        Returns:
            `torch.Tensor`: Depth latent.
        """
        # encode
        dims = depth_in.squeeze().shape
        h = self.vae.encoder(depth_in.reshape(1, 1, *dims).repeat(1, 3, 1, 1))
        moments = self.vae.quant_conv(h)
        mean, _ = torch.chunk(moments, 2, dim=1)
        depth_latent = mean * self.depth_latent_scale_factor
        return depth_latent

    def _encode_rgb(self, rgb_in: torch.Tensor) -> torch.Tensor:
        """
        Encode RGB image into latent.

        Args:
            rgb_in (`torch.Tensor`):
                Input RGB image to be encoded.

        Returns:
            `torch.Tensor`: Image latent.
        """
        # encode
        h = self.vae.encoder(rgb_in)
        moments = self.vae.quant_conv(h)
        mean, logvar = torch.chunk(moments, 2, dim=1)
        # scale latent
        rgb_latent = mean * self.rgb_latent_scale_factor
        return rgb_latent

    def _decode_depth(self, depth_latent: torch.Tensor) -> torch.Tensor:
        """
        Decode depth latent into depth map.

        Args:
            depth_latent (`torch.Tensor`):
                Depth latent to be decoded.

        Returns:
            `torch.Tensor`: Decoded depth map.
        """
        # scale latent
        depth_latent = depth_latent / self.depth_latent_scale_factor
        # decode
        z = self.vae.post_quant_conv(depth_latent)
        stacked = self.vae.decoder(z)
        # mean of output channels
        depth_mean = stacked.mean(dim=1, keepdim=True)
        return depth_mean

    @staticmethod
    def resize_max_res(img: Image.Image, max_edge_resolution: int) -> Image.Image:
        """
        Resize image to limit maximum edge length while keeping aspect ratio.

        Args:
            img (`Image.Image`):
                Image to be resized.
            max_edge_resolution (`int`):
                Maximum edge length (pixel).

        Returns:
            `Image.Image`: Resized image.
        """
        original_width, original_height = img.size
        downscale_factor = min(
            max_edge_resolution / original_width, max_edge_resolution / original_height
        )

        new_width = int(original_width * downscale_factor)
        new_height = int(original_height * downscale_factor)

        resized_img = img.resize((new_width, new_height))
        return resized_img

    @staticmethod
    def colorize_depth_maps(
        depth_map, min_depth, max_depth, cmap="Spectral", valid_mask=None
    ):
        """
        Colorize depth maps.
        """
        assert len(depth_map.shape) >= 2, "Invalid dimension"

        if isinstance(depth_map, torch.Tensor):
            depth = depth_map.detach().squeeze().numpy()
        elif isinstance(depth_map, np.ndarray):
            depth = depth_map.copy().squeeze()
        # reshape to [ (B,) H, W ]
        if depth.ndim < 3:
            depth = depth[np.newaxis, :, :]

        # colorize
        cm = matplotlib.colormaps[cmap]
        depth = ((depth - min_depth) / (max_depth - min_depth)).clip(0, 1)
        img_colored_np = cm(depth, bytes=False)[:, :, :, 0:3]  # value from 0 to 1
        img_colored_np = np.rollaxis(img_colored_np, 3, 1)

        if valid_mask is not None:
            if isinstance(depth_map, torch.Tensor):
                valid_mask = valid_mask.detach().numpy()
            valid_mask = valid_mask.squeeze()  # [H, W] or [B, H, W]
            if valid_mask.ndim < 3:
                valid_mask = valid_mask[np.newaxis, np.newaxis, :, :]
            else:
                valid_mask = valid_mask[:, np.newaxis, :, :]
            valid_mask = np.repeat(valid_mask, 3, axis=1)
            img_colored_np[~valid_mask] = 0

        if isinstance(depth_map, torch.Tensor):
            img_colored = torch.from_numpy(img_colored_np).float()
        elif isinstance(depth_map, np.ndarray):
            img_colored = img_colored_np

        return img_colored

    @staticmethod
    def chw2hwc(chw):
        assert 3 == len(chw.shape)
        if isinstance(chw, torch.Tensor):
            hwc = torch.permute(chw, (1, 2, 0))
        elif isinstance(chw, np.ndarray):
            hwc = np.moveaxis(chw, 0, -1)
        return hwc

    @staticmethod
    def _find_batch_size(ensemble_size: int, input_res: int, dtype: torch.dtype) -> int:
        """
        Automatically search for suitable operating batch size.

        Args:
            ensemble_size (`int`):
                Number of predictions to be ensembled.
            input_res (`int`):
                Operating resolution of the input image.

        Returns:
            `int`: Operating batch size.
        """
        # Search table for suggested max. inference batch size
        bs_search_table = [
            # tested on A100-PCIE-80GB
            {"res": 768, "total_vram": 79, "bs": 35, "dtype": torch.float32},
            {"res": 1024, "total_vram": 79, "bs": 20, "dtype": torch.float32},
            # tested on A100-PCIE-40GB
            {"res": 768, "total_vram": 39, "bs": 15, "dtype": torch.float32},
            {"res": 1024, "total_vram": 39, "bs": 8, "dtype": torch.float32},
            {"res": 768, "total_vram": 39, "bs": 30, "dtype": torch.float16},
            {"res": 1024, "total_vram": 39, "bs": 15, "dtype": torch.float16},
            # tested on RTX3090, RTX4090
            {"res": 512, "total_vram": 23, "bs": 20, "dtype": torch.float32},
            {"res": 768, "total_vram": 23, "bs": 7, "dtype": torch.float32},
            {"res": 1024, "total_vram": 23, "bs": 3, "dtype": torch.float32},
            {"res": 512, "total_vram": 23, "bs": 40, "dtype": torch.float16},
            {"res": 768, "total_vram": 23, "bs": 18, "dtype": torch.float16},
            {"res": 1024, "total_vram": 23, "bs": 10, "dtype": torch.float16},
            # tested on GTX1080Ti
            {"res": 512, "total_vram": 10, "bs": 5, "dtype": torch.float32},
            {"res": 768, "total_vram": 10, "bs": 2, "dtype": torch.float32},
            {"res": 512, "total_vram": 10, "bs": 10, "dtype": torch.float16},
            {"res": 768, "total_vram": 10, "bs": 5, "dtype": torch.float16},
            {"res": 1024, "total_vram": 10, "bs": 3, "dtype": torch.float16},
        ]

        if not torch.cuda.is_available():
            return 1

        total_vram = torch.cuda.mem_get_info()[1] / 1024.0**3
        filtered_bs_search_table = [s for s in bs_search_table if s["dtype"] == dtype]
        for settings in sorted(
            filtered_bs_search_table,
            key=lambda k: (k["res"], -k["total_vram"]),
        ):
            if input_res <= settings["res"] and total_vram >= settings["total_vram"]:
                bs = settings["bs"]
                if bs > ensemble_size:
                    bs = ensemble_size
                elif bs > math.ceil(ensemble_size / 2) and bs < ensemble_size:
                    bs = math.ceil(ensemble_size / 2)
                return bs

        return 1

    @staticmethod
    def ensemble_depths(
        input_images: torch.Tensor,
        regularizer_strength: float = 0.02,
        max_iter: int = 2,
        tol: float = 1e-3,
        reduction: str = "median",
        max_res: int = None,
    ):
        """
        To ensemble multiple affine-invariant depth images (up to scale and shift),
            by aligning estimating the scale and shift
        """

        def inter_distances(tensors: torch.Tensor):
            """
            To calculate the distance between each two depth maps.
            """
            distances = []
            for i, j in torch.combinations(torch.arange(tensors.shape[0])):
                arr1 = tensors[i : i + 1]
                arr2 = tensors[j : j + 1]
                distances.append(arr1 - arr2)
            dist = torch.concatenate(distances, dim=0)
            return dist

        device = input_images.device
        dtype = input_images.dtype
        np_dtype = np.float32

        original_input = input_images.clone()
        n_img = input_images.shape[0]
        ori_shape = input_images.shape

        if max_res is not None:
            scale_factor = torch.min(max_res / torch.tensor(ori_shape[-2:]))
            if scale_factor < 1:
                downscaler = torch.nn.Upsample(
                    scale_factor=scale_factor, mode="nearest"
                )
                input_images = downscaler(torch.from_numpy(input_images)).numpy()

        # init guess
        _min = np.min(input_images.reshape((n_img, -1)).cpu().numpy(), axis=1)
        _max = np.max(input_images.reshape((n_img, -1)).cpu().numpy(), axis=1)
        s_init = 1.0 / (_max - _min).reshape((-1, 1, 1))
        t_init = (-1 * s_init.flatten() * _min.flatten()).reshape((-1, 1, 1))
        x = np.concatenate([s_init, t_init]).reshape(-1).astype(np_dtype)

        input_images = input_images.to(device)

        # objective function
        def closure(x):
            l = len(x)
            s = x[: int(l / 2)]
            t = x[int(l / 2) :]
            s = torch.from_numpy(s).to(dtype=dtype).to(device)
            t = torch.from_numpy(t).to(dtype=dtype).to(device)

            transformed_arrays = input_images * s.view((-1, 1, 1)) + t.view((-1, 1, 1))
            dists = inter_distances(transformed_arrays)
            sqrt_dist = torch.sqrt(torch.mean(dists**2))

            if "mean" == reduction:
                pred = torch.mean(transformed_arrays, dim=0)
            elif "median" == reduction:
                pred = torch.median(transformed_arrays, dim=0).values
            else:
                raise ValueError

            near_err = torch.sqrt((0 - torch.min(pred)) ** 2)
            far_err = torch.sqrt((1 - torch.max(pred)) ** 2)

            err = sqrt_dist + (near_err + far_err) * regularizer_strength
            err = err.detach().cpu().numpy().astype(np_dtype)
            return err

        res = minimize(
            closure,
            x,
            method="BFGS",
            tol=tol,
            options={"maxiter": max_iter, "disp": False},
        )
        x = res.x
        l = len(x)
        s = x[: int(l / 2)]
        t = x[int(l / 2) :]

        # Prediction
        s = torch.from_numpy(s).to(dtype=dtype).to(device)
        t = torch.from_numpy(t).to(dtype=dtype).to(device)
        transformed_arrays = original_input * s.view(-1, 1, 1) + t.view(-1, 1, 1)
        if "mean" == reduction:
            aligned_images = torch.mean(transformed_arrays, dim=0)
            std = torch.std(transformed_arrays, dim=0)
            uncertainty = std
        elif "median" == reduction:
            aligned_images = torch.median(transformed_arrays, dim=0).values
            # MAD (median absolute deviation) as uncertainty indicator
            abs_dev = torch.abs(transformed_arrays - aligned_images)
            mad = torch.median(abs_dev, dim=0).values
            uncertainty = mad
        else:
            raise ValueError(f"Unknown reduction method: {reduction}")

        # Scale and shift to [0, 1]
        _min = torch.min(aligned_images)
        _max = torch.max(aligned_images)
        aligned_images = (aligned_images - _min) / (_max - _min)
        uncertainty /= _max - _min

        return aligned_images, uncertainty