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'''
* The Recognize Anything Model (RAM) & Tag2Text Model
* Written by Xinyu Huang
'''
import numpy as np
import json
import torch
import warnings
from torch import nn
from models.bert import BertConfig, BertModel, BertLMHeadModel
from models.vit import VisionTransformer
from models.swin_transformer import SwinTransformer
from data.ram_tag_list_threshold import ram_class_threshold
from models.utils import *
warnings.filterwarnings("ignore")
class RAM(nn.Module):
def __init__(self,
med_config=f'{CONFIG_PATH}/configs/med_config.json',
image_size=384,
vit='base',
vit_grad_ckpt=False,
vit_ckpt_layer=0,
prompt='a picture of ',
threshold=0.68,
delete_tag_index=[],
tag_list=f'{CONFIG_PATH}/data/ram_tag_list.txt',
tag_list_chinese=f'{CONFIG_PATH}/data/ram_tag_list_chinese.txt'):
r""" The Recognize Anything Model (RAM) inference module.
RAM is a strong image tagging model, which can recognize any common category with high accuracy.
Described in the paper " Recognize Anything: A Strong Image Tagging Model" https://recognize-anything.github.io/
Args:
med_config (str): path for the mixture of encoder-decoder model's configuration file
image_size (int): input image size
vit (str): model size of vision transformer
threshold (int): tagging threshold
delete_tag_index (list): delete some tags that may disturb captioning
"""
super().__init__()
# create image encoder
if vit == 'swin_b':
if image_size == 224:
vision_config_path = f'{CONFIG_PATH}/configs/swin/config_swinB_224.json'
elif image_size == 384:
vision_config_path = f'{CONFIG_PATH}/configs/swin/config_swinB_384.json'
vision_config = read_json(vision_config_path)
assert image_size == vision_config['image_res']
# assert config['patch_size'] == 32
vision_width = vision_config['vision_width']
self.visual_encoder = SwinTransformer(
img_size=vision_config['image_res'],
patch_size=4,
in_chans=3,
embed_dim=vision_config['embed_dim'],
depths=vision_config['depths'],
num_heads=vision_config['num_heads'],
window_size=vision_config['window_size'],
mlp_ratio=4.,
qkv_bias=True,
drop_rate=0.0,
drop_path_rate=0.1,
ape=False,
patch_norm=True,
use_checkpoint=False)
elif vit == 'swin_l':
if image_size == 224:
vision_config_path = f'{CONFIG_PATH}/configs/swin/config_swinL_224.json'
elif image_size == 384:
vision_config_path = f'{CONFIG_PATH}/configs/swin/config_swinL_384.json'
vision_config = read_json(vision_config_path)
assert image_size == vision_config['image_res']
# assert config['patch_size'] == 32
vision_width = vision_config['vision_width']
self.visual_encoder = SwinTransformer(
img_size=vision_config['image_res'],
patch_size=4,
in_chans=3,
embed_dim=vision_config['embed_dim'],
depths=vision_config['depths'],
num_heads=vision_config['num_heads'],
window_size=vision_config['window_size'],
mlp_ratio=4.,
qkv_bias=True,
drop_rate=0.0,
drop_path_rate=0.1,
ape=False,
patch_norm=True,
use_checkpoint=False)
else:
self.visual_encoder, vision_width = create_vit(
vit, image_size, vit_grad_ckpt, vit_ckpt_layer)
# create tokenzier
self.tokenizer = init_tokenizer()
# Tag2Text employ encoder-decoder architecture for image-tag-text generation: image-tag interaction encoder and image-tag-text decoder
# create image-tag interaction encoder
encoder_config = BertConfig.from_json_file(med_config)
encoder_config.encoder_width = 512
self.tag_encoder = BertModel(config=encoder_config,
add_pooling_layer=False)
# create image-tag-text decoder
decoder_config = BertConfig.from_json_file(med_config)
self.text_decoder = BertLMHeadModel(config=decoder_config)
self.delete_tag_index = delete_tag_index
self.prompt = prompt
self.prompt_length = len(self.tokenizer(self.prompt).input_ids) - 1
# load tag list
self.tag_list = self.load_tag_list(tag_list)
self.tag_list_chinese = self.load_tag_list(tag_list_chinese)
# create image-tag recognition decoder
self.threshold = threshold
self.num_class = len(self.tag_list)
q2l_config = BertConfig.from_json_file(f'{CONFIG_PATH}/configs/q2l_config.json')
q2l_config.encoder_width = 512
self.tagging_head = BertModel(config=q2l_config,
add_pooling_layer=False)
self.tagging_head.resize_token_embeddings(len(self.tokenizer))
self.label_embed = nn.Embedding(self.num_class, q2l_config.hidden_size)
if q2l_config.hidden_size != 512:
self.wordvec_proj = nn.Linear(512, q2l_config.hidden_size)
else:
self.wordvec_proj = nn.Identity()
self.fc = nn.Linear(q2l_config.hidden_size, 1)
self.del_selfattention()
# share weights of the lowest 2-layer of "image-tag interaction encoder" with the "image-tag recogntion decoder"
tie_encoder_decoder_weights(self.tag_encoder, self.tagging_head, '',
' ')
self.image_proj = nn.Linear(vision_width, 512)
self.label_embed = nn.Parameter(torch.load('data/textual_label_embedding.pth',map_location='cpu').float())
# adjust thresholds for some tags
self.class_threshold = torch.ones(self.num_class) * self.threshold
for key,value in enumerate(ram_class_threshold):
self.class_threshold[key] = value
def load_tag_list(self, tag_list_file):
with open(tag_list_file, 'r') as f:
tag_list = f.read().splitlines()
tag_list = np.array(tag_list)
return tag_list
# delete self-attention layer of image-tag recognition decoder to reduce computation, follower Query2Label
def del_selfattention(self):
del self.tagging_head.embeddings
for layer in self.tagging_head.encoder.layer:
del layer.attention
def generate_tag(self,
image,
threshold=0.68,
tag_input=None,
):
label_embed = torch.nn.functional.relu(self.wordvec_proj(self.label_embed))
image_embeds = self.image_proj(self.visual_encoder(image))
image_atts = torch.ones(image_embeds.size()[:-1],
dtype=torch.long).to(image.device)
# recognized image tags using image-tag recogntiion decoder
image_cls_embeds = image_embeds[:, 0, :]
image_spatial_embeds = image_embeds[:, 1:, :]
bs = image_spatial_embeds.shape[0]
label_embed = label_embed.unsqueeze(0).repeat(bs, 1, 1)
tagging_embed = self.tagging_head(
encoder_embeds=label_embed,
encoder_hidden_states=image_embeds,
encoder_attention_mask=image_atts,
return_dict=False,
mode='tagging',
)
logits = self.fc(tagging_embed[0]).squeeze(-1)
targets = torch.where(
torch.sigmoid(logits) > self.class_threshold.to(image.device),
torch.tensor(1.0).to(image.device),
torch.zeros(self.num_class).to(image.device))
tag = targets.cpu().numpy()
tag[:,self.delete_tag_index] = 0
tag_output = []
tag_output_chinese = []
for b in range(bs):
index = np.argwhere(tag[b] == 1)
token = self.tag_list[index].squeeze(axis=1)
tag_output.append(' | '.join(token))
token_chinese = self.tag_list_chinese[index].squeeze(axis=1)
tag_output_chinese.append(' | '.join(token_chinese))
return tag_output, tag_output_chinese
class Tag2Text_Caption(nn.Module):
def __init__(self,
med_config=f'{CONFIG_PATH}/configs/med_config.json',
image_size=384,
vit='base',
vit_grad_ckpt=False,
vit_ckpt_layer=0,
prompt='a picture of ',
threshold=0.68,
delete_tag_index=[127,2961, 3351, 3265, 3338, 3355, 3359],
tag_list=f'{CONFIG_PATH}/data/tag_list.txt'):
r""" Tag2Text inference module, both captioning and tagging are included.
Tag2Text is an efficient and controllable vision-language pre-training framework.
Described in the paper "Tag2Text: Guiding Vision-Language Model via Image Tagging" https://arxiv.org/abs/2303.05657
Args:
med_config (str): path for the mixture of encoder-decoder model's configuration file
image_size (int): input image size
vit (str): model size of vision transformer
threshold (int): tagging threshold
delete_tag_index (list): delete some tags that may disturb captioning
"""
super().__init__()
# create image encoder
if vit == 'swin_b':
if image_size == 224:
vision_config_path = f'{CONFIG_PATH}/configs/swin/config_swinB_224.json'
elif image_size == 384:
vision_config_path = f'{CONFIG_PATH}/configs/swin/config_swinB_384.json'
vision_config = read_json(vision_config_path)
assert image_size == vision_config['image_res']
# assert config['patch_size'] == 32
vision_width = vision_config['vision_width']
self.visual_encoder = SwinTransformer(
img_size=vision_config['image_res'],
patch_size=4,
in_chans=3,
embed_dim=vision_config['embed_dim'],
depths=vision_config['depths'],
num_heads=vision_config['num_heads'],
window_size=vision_config['window_size'],
mlp_ratio=4.,
qkv_bias=True,
drop_rate=0.0,
drop_path_rate=0.1,
ape=False,
patch_norm=True,
use_checkpoint=False)
else:
self.visual_encoder, vision_width = create_vit(
vit, image_size, vit_grad_ckpt, vit_ckpt_layer)
# create tokenzier
self.tokenizer = init_tokenizer()
# Tag2Text employ encoder-decoder architecture for image-tag-text generation: image-tag interaction encoder and image-tag-text decoder
# create image-tag interaction encoder
encoder_config = BertConfig.from_json_file(med_config)
encoder_config.encoder_width = vision_width
self.tag_encoder = BertModel(config=encoder_config,
add_pooling_layer=False)
# create image-tag-text decoder
decoder_config = BertConfig.from_json_file(med_config)
self.text_decoder = BertLMHeadModel(config=decoder_config)
# delete some tags that may disturb captioning
# 127: "quarter"; 2961: "back"; 3351: "two"; 3265: "three"; 3338: "four"; 3355: "five"; 3359: "one"
self.delete_tag_index = delete_tag_index
self.prompt = prompt
self.prompt_length = len(self.tokenizer(self.prompt).input_ids) - 1
# load tag list
self.tag_list = self.load_tag_list(tag_list)
# create image-tag recognition decoder
self.threshold = threshold
self.num_class = len(self.tag_list)
q2l_config = BertConfig.from_json_file(f'{CONFIG_PATH}/configs/q2l_config.json')
q2l_config.encoder_width = vision_width
self.tagging_head = BertModel(config=q2l_config,
add_pooling_layer=False)
self.tagging_head.resize_token_embeddings(len(self.tokenizer))
self.label_embed = nn.Embedding(self.num_class, q2l_config.hidden_size)
self.fc = GroupWiseLinear(self.num_class,
q2l_config.hidden_size,
bias=True)
self.del_selfattention()
# share weights of the lowest 2-layer of "image-tag interaction encoder" with the "image-tag recogntion decoder"
tie_encoder_decoder_weights(self.tag_encoder, self.tagging_head, '',
' ')
# adjust thresholds for some tags
# default threshold: 0.68
# 2701: "person"; 2828: "man"; 1167: "woman";
tag_thrshold = {2701:0.7, 2828: 0.7, 1167: 0.7}
self.class_threshold = torch.ones(self.num_class) * self.threshold
for key,value in tag_thrshold.items():
self.class_threshold[key] = value
def load_tag_list(self, tag_list_file):
with open(tag_list_file, 'r') as f:
tag_list = f.read().splitlines()
tag_list = np.array(tag_list)
return tag_list
# delete self-attention layer of image-tag recognition decoder to reduce computation, follower Query2Label
def del_selfattention(self):
del self.tagging_head.embeddings
for layer in self.tagging_head.encoder.layer:
del layer.attention
def generate(self,
image,
sample=False,
num_beams=3,
max_length=30,
min_length=10,
top_p=0.9,
repetition_penalty=1.0,
tag_input=None,
return_tag_predict=False):
image_embeds = self.visual_encoder(image)
image_atts = torch.ones(image_embeds.size()[:-1],
dtype=torch.long).to(image.device)
# if not user specified tags, recognized image tags using image-tag recogntiion decoder
if tag_input == None:
image_cls_embeds = image_embeds[:, 0, :]
image_spatial_embeds = image_embeds[:, 1:, :]
bs = image_spatial_embeds.shape[0]
label_embed = self.label_embed.weight.unsqueeze(0).repeat(bs, 1, 1)
tagging_embed = self.tagging_head(
encoder_embeds=label_embed,
encoder_hidden_states=image_embeds,
encoder_attention_mask=image_atts,
return_dict=False,
mode='tagging',
)
logits = self.fc(tagging_embed[0])
targets = torch.where(
torch.sigmoid(logits) > self.class_threshold,
torch.tensor(1.0).to(image.device),
torch.zeros(self.num_class).to(image.device))
tag = targets.cpu().numpy()
# delete some tags that may disturb captioning
tag[:, self.delete_tag_index] = 0
tag_input = []
for b in range(bs):
index = np.argwhere(tag[b] == 1)
token = self.tag_list[index].squeeze(axis=1)
tag_input.append(' | '.join(token))
tag_output = tag_input
# beam search for text generation(default)
if not sample:
image_embeds = image_embeds.repeat_interleave(num_beams, dim=0)
tag_input_temp = []
for tag in tag_input:
for i in range(num_beams):
tag_input_temp.append(tag)
tag_input = tag_input_temp
image_atts = torch.ones(image_embeds.size()[:-1],
dtype=torch.long).to(image.device)
# tokenizer input tags
tag_input_tokenzier = self.tokenizer(tag_input,
padding='max_length',
truncation=True,
max_length=40,
return_tensors="pt").to(
image.device)
encoder_input_ids = tag_input_tokenzier.input_ids
encoder_input_ids[:, 0] = self.tokenizer.enc_token_id
# put input tag into image-tag interaction encoder to interact with image embeddings
output_tagembedding = self.tag_encoder(
encoder_input_ids,
attention_mask=tag_input_tokenzier.attention_mask,
encoder_hidden_states=image_embeds,
encoder_attention_mask=image_atts,
return_dict=True,
)
# prompt trick for better captioning, followed BLIP
prompt = [self.prompt] * image.size(0)
input_ids = self.tokenizer(prompt, return_tensors="pt").input_ids.to(
image.device)
input_ids[:, 0] = self.tokenizer.bos_token_id
input_ids = input_ids[:, :-1]
if sample:
# nucleus sampling
model_kwargs = {
"encoder_hidden_states": output_tagembedding.last_hidden_state,
"encoder_attention_mask": None
}
outputs = self.text_decoder.generate(
input_ids=input_ids,
max_length=max_length,
min_length=min_length,
do_sample=True,
top_p=top_p,
num_return_sequences=1,
eos_token_id=self.tokenizer.sep_token_id,
pad_token_id=self.tokenizer.pad_token_id,
repetition_penalty=1.1,
**model_kwargs)
else:
# beam search (default)
model_kwargs = {
"encoder_hidden_states": output_tagembedding.last_hidden_state,
"encoder_attention_mask": None
}
outputs = self.text_decoder.generate(
input_ids=input_ids,
max_length=max_length,
min_length=min_length,
num_beams=num_beams,
eos_token_id=self.tokenizer.sep_token_id,
pad_token_id=self.tokenizer.pad_token_id,
repetition_penalty=repetition_penalty,
**model_kwargs)
captions = []
for output in outputs:
caption = self.tokenizer.decode(output, skip_special_tokens=True)
captions.append(caption[len(self.prompt):])
if return_tag_predict == True:
return captions, tag_output
return captions
# load Tag2Text pretrained model parameters
def tag2text_caption(pretrained='', **kwargs):
model = Tag2Text_Caption(**kwargs)
if pretrained:
if kwargs['vit'] == 'swin_b':
model, msg = load_checkpoint_swinbase(model, pretrained, kwargs)
else:
model, msg = load_checkpoint(model, pretrained)
print('vit:', kwargs['vit'])
print('msg', msg)
return model
# load RAM pretrained model parameters
def ram(pretrained='', **kwargs):
model = RAM(**kwargs)
if pretrained:
if kwargs['vit'] == 'swin_b':
model, msg = load_checkpoint_swinbase(model, pretrained, kwargs)
elif kwargs['vit'] == 'swin_l':
model, msg = load_checkpoint_swinlarge(model, pretrained, kwargs)
else:
model, msg = load_checkpoint(model, pretrained)
print('vit:', kwargs['vit'])
print('msg', msg)
return model