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import torch
import torch.nn as nn
import torchvision
import numpy as np
from torch.autograd import Variable
import torchvision.models as models
import transformers
import torchvision.transforms
import torchxrayvision as xrv
from transformers import ViTModel, ViTConfig
class VisualFeatureExtractor(nn.Module):
def __init__(self, model_name='densenet201', pretrained=False):
super(VisualFeatureExtractor, self).__init__()
self.model_name = 'chexnet'
self.pretrained = pretrained
self.model, self.out_features, self.avg_func, self.bn, self.linear = self.__get_model()
self.activation = nn.ReLU()
def __get_model(self):
model = None
out_features = None
func = None
if self.model_name == 'resnet152':
resnet = models.resnet152(pretrained=self.pretrained)
modules = list(resnet.children())[:-2]
model = nn.Sequential(*modules)
out_features = resnet.fc.in_features
func = torch.nn.AvgPool2d(kernel_size=7, stride=1, padding=0)
elif self.model_name == 'densenet201':
densenet = models.densenet201(pretrained=self.pretrained)
modules = list(densenet.features)
model = nn.Sequential(*modules)
func = torch.nn.AvgPool2d(kernel_size=7, stride=1, padding=0)
out_features = densenet.classifier.in_features
elif self.model_name == 'chexnet':
print("vit chest xray pretrained model loading")
# Load the Vision Transformer (ViT) model configuration
config = ViTConfig.from_pretrained('nickmuchi/vit-finetuned-chest-xray-pneumonia')
# Initialize the ViT model with the specific configuration
vit_model = ViTModel(config)
# Load the state dict specifically, excluding 'classifier.bias', 'classifier.weight'
state_dict = torch.load('model/pytorch_model.bin', map_location=torch.device('cpu'))
state_dict = {k: v for k, v in state_dict.items() if not k.startswith('classifier')}
vit_model.load_state_dict(state_dict, strict=False)
model = vit_model
out_features = config.hidden_size
linear = nn.Linear(in_features=out_features, out_features=out_features)
bn = nn.BatchNorm1d(num_features=out_features, momentum=0.1)
return model, out_features, func, bn, linear
def forward(self, images):
"""
:param images: Input images
:return: visual_features, avg_features
"""
model_output = self.model(images)
# Extract the pooler_output
pooler_output = model_output.pooler_output
# Apply the linear layer, batch normalization, and activation
avg_features = self.activation(self.bn(self.linear(pooler_output)))
return model_output.last_hidden_state, avg_features
# def forward(self, images):
# """
# :param images:
# :return:
# """
# visual_features = self.model(images)
# avg_features = self.avg_func(visual_features).squeeze()
# # avg_features = self.activation(self.bn(self.linear(visual_features)))
# return visual_features, avg_features
class MLC(nn.Module):
def __init__(self,
classes=210,
sementic_features_dim=512,
fc_in_features=2048,
k=10,
):
super(MLC, self).__init__()
pretrained_model_name="nickmuchi/vit-finetuned-chest-xray-pneumonia"
vit_config = ViTConfig.from_pretrained(pretrained_model_name)
self.vit = ViTModel(vit_config)
# Adjust the classifier to your number of classes
self.classifier = nn.Linear(in_features=vit_config.hidden_size, out_features=classes)
self.embed = nn.Embedding(classes, sementic_features_dim)
self.k = k
self.sigmoid = nn.Sigmoid()
self.__init_weight()
def __init_weight(self):
nn.init.xavier_uniform_(self.classifier.weight)
if self.classifier.bias is not None:
self.classifier.bias.data.fill_(0)
def forward(self, avg_features):
tags = self.sigmoid(self.classifier(avg_features))
semantic_features = self.embed(torch.topk(tags, self.k)[1])
return tags, semantic_features
# class MLC(nn.Module):
# def __init__(self,
# classes=210,
# sementic_features_dim=512,
# fc_in_features=2048,
# k=10):
# super(MLC, self).__init__()
# self.classifier = nn.Linear(in_features=fc_in_features, out_features=classes)
# self.embed = nn.Embedding(classes, sementic_features_dim)
# self.k = k
# self.sigmoid = nn.Sigmoid()
# self.__init_weight()
# def __init_weight(self):
# # Example: Initialize weights with a different strategy
# nn.init.xavier_uniform_(self.classifier.weight)
# if self.classifier.bias is not None:
# self.classifier.bias.data.fill_(0)
# def forward(self, avg_features):
# tags = self.sigmoid(self.classifier(avg_features))
# semantic_features = self.embed(torch.topk(tags, self.k)[1])
# return tags, semantic_features
class CoAttention(nn.Module):
def __init__(self,
version='v1',
embed_size=512,
hidden_size=512,
visual_size=2048,
k=10,
momentum=0.1):
super(CoAttention, self).__init__()
self.version = version
self.W_v = nn.Linear(in_features=visual_size, out_features=visual_size)
self.bn_v = nn.BatchNorm1d(num_features=visual_size, momentum=momentum)
self.W_v_h = nn.Linear(in_features=hidden_size, out_features=visual_size)
self.bn_v_h = nn.BatchNorm1d(num_features=visual_size, momentum=momentum)
self.W_v_att = nn.Linear(in_features=visual_size, out_features=visual_size)
self.bn_v_att = nn.BatchNorm1d(num_features=visual_size, momentum=momentum)
self.W_a = nn.Linear(in_features=hidden_size, out_features=hidden_size)
self.bn_a = nn.BatchNorm1d(num_features=k, momentum=momentum)
self.W_a_h = nn.Linear(in_features=hidden_size, out_features=hidden_size)
self.bn_a_h = nn.BatchNorm1d(num_features=1, momentum=momentum)
self.W_a_att = nn.Linear(in_features=hidden_size, out_features=hidden_size)
self.bn_a_att = nn.BatchNorm1d(num_features=k, momentum=momentum)
# self.W_fc = nn.Linear(in_features=visual_size, out_features=embed_size) # for v3
self.W_fc = nn.Linear(in_features=visual_size + hidden_size, out_features=embed_size)
self.bn_fc = nn.BatchNorm1d(num_features=embed_size, momentum=momentum)
self.tanh = nn.Tanh()
self.softmax = nn.Softmax()
self.__init_weight()
def __init_weight(self):
self.W_v.weight.data.uniform_(-0.1, 0.1)
self.W_v.bias.data.fill_(0)
self.W_v_h.weight.data.uniform_(-0.1, 0.1)
self.W_v_h.bias.data.fill_(0)
self.W_v_att.weight.data.uniform_(-0.1, 0.1)
self.W_v_att.bias.data.fill_(0)
self.W_a.weight.data.uniform_(-0.1, 0.1)
self.W_a.bias.data.fill_(0)
self.W_a_h.weight.data.uniform_(-0.1, 0.1)
self.W_a_h.bias.data.fill_(0)
self.W_a_att.weight.data.uniform_(-0.1, 0.1)
self.W_a_att.bias.data.fill_(0)
self.W_fc.weight.data.uniform_(-0.1, 0.1)
self.W_fc.bias.data.fill_(0)
def forward(self, avg_features, semantic_features, h_sent):
if self.version == 'v1':
return self.v1(avg_features, semantic_features, h_sent)
elif self.version == 'v2':
return self.v2(avg_features, semantic_features, h_sent)
elif self.version == 'v3':
return self.v3(avg_features, semantic_features, h_sent)
elif self.version == 'v4':
return self.v4(avg_features, semantic_features, h_sent)
elif self.version == 'v5':
return self.v5(avg_features, semantic_features, h_sent)
def v1(self, avg_features, semantic_features, h_sent) -> object:
"""
only training
:rtype: object
"""
W_v = self.bn_v(self.W_v(avg_features))
W_v_h = self.bn_v_h(self.W_v_h(h_sent.squeeze(1)))
alpha_v = self.softmax(self.bn_v_att(self.W_v_att(self.tanh(W_v + W_v_h))))
v_att = torch.mul(alpha_v, avg_features)
W_a_h = self.bn_a_h(self.W_a_h(h_sent))
W_a = self.bn_a(self.W_a(semantic_features))
alpha_a = self.softmax(self.bn_a_att(self.W_a_att(self.tanh(torch.add(W_a_h, W_a)))))
a_att = torch.mul(alpha_a, semantic_features).sum(1)
ctx = self.W_fc(torch.cat([v_att, a_att], dim=1))
return ctx, alpha_v, alpha_a
def v2(self, avg_features, semantic_features, h_sent) -> object:
"""
no bn
:rtype: object
"""
W_v = self.W_v(avg_features)
W_v_h = self.W_v_h(h_sent.squeeze(1))
alpha_v = self.softmax(self.W_v_att(self.tanh(W_v + W_v_h)))
v_att = torch.mul(alpha_v, avg_features)
W_a_h = self.W_a_h(h_sent)
W_a = self.W_a(semantic_features)
alpha_a = self.softmax(self.W_a_att(self.tanh(torch.add(W_a_h, W_a))))
a_att = torch.mul(alpha_a, semantic_features).sum(1)
ctx = self.W_fc(torch.cat([v_att, a_att], dim=1))
return ctx, alpha_v, alpha_a
def v3(self, avg_features, semantic_features, h_sent) -> object:
"""
:rtype: object
"""
W_v = self.bn_v(self.W_v(avg_features))
W_v_h = self.bn_v_h(self.W_v_h(h_sent.squeeze(1)))
alpha_v = self.softmax(self.W_v_att(self.tanh(W_v + W_v_h)))
v_att = torch.mul(alpha_v, avg_features)
W_a_h = self.bn_a_h(self.W_a_h(h_sent))
W_a = self.bn_a(self.W_a(semantic_features))
alpha_a = self.softmax(self.W_a_att(self.tanh(torch.add(W_a_h, W_a))))
a_att = torch.mul(alpha_a, semantic_features).sum(1)
ctx = self.W_fc(torch.cat([v_att, a_att], dim=1))
return ctx, alpha_v, alpha_a
def v4(self, avg_features, semantic_features, h_sent):
W_v = self.W_v(avg_features)
W_v_h = self.W_v_h(h_sent.squeeze(1))
alpha_v = self.softmax(self.W_v_att(self.tanh(torch.add(W_v, W_v_h))))
v_att = torch.mul(alpha_v, avg_features)
W_a_h = self.W_a_h(h_sent)
W_a = self.W_a(semantic_features)
alpha_a = self.softmax(self.W_a_att(self.tanh(torch.add(W_a_h, W_a))))
a_att = torch.mul(alpha_a, semantic_features).sum(1)
ctx = self.W_fc(torch.cat([v_att, a_att], dim=1))
return ctx, alpha_v, alpha_a
def v5(self, avg_features, semantic_features, h_sent):
W_v = self.W_v(avg_features)
W_v_h = self.W_v_h(h_sent.squeeze(1))
alpha_v = self.softmax(self.W_v_att(self.tanh(self.bn_v(torch.add(W_v, W_v_h)))))
v_att = torch.mul(alpha_v, avg_features)
W_a_h = self.W_a_h(h_sent)
W_a = self.W_a(semantic_features)
alpha_a = self.softmax(self.W_a_att(self.tanh(self.bn_a(torch.add(W_a_h, W_a)))))
a_att = torch.mul(alpha_a, semantic_features).sum(1)
ctx = self.W_fc(torch.cat([v_att, a_att], dim=1))
return ctx, alpha_v, alpha_a
class SentenceLSTM(nn.Module):
def __init__(self,
version='v1',
embed_size=512,
hidden_size=512,
num_layers=1,
dropout=0.3,
momentum=0.1):
super(SentenceLSTM, self).__init__()
self.version = version
self.lstm = nn.LSTM(input_size=embed_size,
hidden_size=hidden_size,
num_layers=num_layers,
dropout=dropout)
self.W_t_h = nn.Linear(in_features=hidden_size,
out_features=embed_size,
bias=True)
self.bn_t_h = nn.BatchNorm1d(num_features=1, momentum=momentum)
self.W_t_ctx = nn.Linear(in_features=embed_size,
out_features=embed_size,
bias=True)
self.bn_t_ctx = nn.BatchNorm1d(num_features=1, momentum=momentum)
self.W_stop_s_1 = nn.Linear(in_features=hidden_size,
out_features=embed_size,
bias=True)
self.bn_stop_s_1 = nn.BatchNorm1d(num_features=1, momentum=momentum)
self.W_stop_s = nn.Linear(in_features=hidden_size,
out_features=embed_size,
bias=True)
self.bn_stop_s = nn.BatchNorm1d(num_features=1, momentum=momentum)
self.W_stop = nn.Linear(in_features=embed_size,
out_features=2,
bias=True)
self.bn_stop = nn.BatchNorm1d(num_features=1, momentum=momentum)
self.W_topic = nn.Linear(in_features=embed_size,
out_features=embed_size,
bias=True)
self.bn_topic = nn.BatchNorm1d(num_features=1, momentum=momentum)
self.sigmoid = nn.Sigmoid()
self.tanh = nn.Tanh()
self.__init_weight()
def __init_weight(self):
self.W_t_h.weight.data.uniform_(-0.1, 0.1)
self.W_t_h.bias.data.fill_(0)
self.W_t_ctx.weight.data.uniform_(-0.1, 0.1)
self.W_t_ctx.bias.data.fill_(0)
self.W_stop_s_1.weight.data.uniform_(-0.1, 0.1)
self.W_stop_s_1.bias.data.fill_(0)
self.W_stop_s.weight.data.uniform_(-0.1, 0.1)
self.W_stop_s.bias.data.fill_(0)
self.W_stop.weight.data.uniform_(-0.1, 0.1)
self.W_stop.bias.data.fill_(0)
self.W_topic.weight.data.uniform_(-0.1, 0.1)
self.W_topic.bias.data.fill_(0)
def forward(self, ctx, prev_hidden_state, states=None) -> object:
"""
:rtype: object
"""
if self.version == 'v1':
return self.v1(ctx, prev_hidden_state, states)
elif self.version == 'v2':
return self.v2(ctx, prev_hidden_state, states)
elif self.version == 'v3':
return self.v3(ctx, prev_hidden_state, states)
def v1(self, ctx, prev_hidden_state, states=None):
"""
v1 (only training)
:param ctx:
:param prev_hidden_state:
:param states:
:return:
"""
ctx = ctx.unsqueeze(1)
hidden_state, states = self.lstm(ctx, states)
topic = self.W_topic(self.sigmoid(self.bn_t_h(self.W_t_h(hidden_state))
+ self.bn_t_ctx(self.W_t_ctx(ctx))))
p_stop = self.W_stop(self.sigmoid(self.bn_stop_s_1(self.W_stop_s_1(prev_hidden_state))
+ self.bn_stop_s(self.W_stop_s(hidden_state))))
return topic, p_stop, hidden_state, states
def v2(self, ctx, prev_hidden_state, states=None):
"""
v2
:rtype: object
"""
ctx = ctx.unsqueeze(1)
hidden_state, states = self.lstm(ctx, states)
topic = self.bn_topic(self.W_topic(self.tanh(self.bn_t_h(self.W_t_h(hidden_state)
+ self.W_t_ctx(ctx)))))
p_stop = self.bn_stop(self.W_stop(self.tanh(self.bn_stop_s(self.W_stop_s_1(prev_hidden_state)
+ self.W_stop_s(hidden_state)))))
return topic, p_stop, hidden_state, states
def v3(self, ctx, prev_hidden_state, states=None):
"""
v3
:rtype: object
"""
ctx = ctx.unsqueeze(1)
hidden_state, states = self.lstm(ctx, states)
topic = self.W_topic(self.tanh(self.W_t_h(hidden_state) + self.W_t_ctx(ctx)))
p_stop = self.W_stop(self.tanh(self.W_stop_s_1(prev_hidden_state) + self.W_stop_s(hidden_state)))
return topic, p_stop, hidden_state, states
class WordLSTM(nn.Module):
def __init__(self,
embed_size,
hidden_size,
vocab_size,
num_layers,
n_max=50):
super(WordLSTM, self).__init__()
self.embed = nn.Embedding(vocab_size, embed_size)
self.lstm = nn.LSTM(embed_size, hidden_size, num_layers, batch_first=True)
self.linear = nn.Linear(hidden_size, vocab_size)
self.__init_weights()
self.n_max = n_max
self.vocab_size = vocab_size
def __init_weights(self):
self.embed.weight.data.uniform_(-0.1, 0.1)
self.linear.weight.data.uniform_(-0.1, 0.1)
self.linear.bias.data.fill_(0)
def forward(self, topic_vec, captions):
embeddings = self.embed(captions)
embeddings = torch.cat((topic_vec, embeddings), 1)
hidden, _ = self.lstm(embeddings)
outputs = self.linear(hidden[:, -1, :])
return outputs
def sample(self, features, start_tokens):
sampled_ids = np.zeros((np.shape(features)[0], self.n_max))
sampled_ids[:, 0] = start_tokens.view(-1, )
predicted = start_tokens
embeddings = features
embeddings = embeddings
for i in range(1, self.n_max):
predicted = self.embed(predicted)
embeddings = torch.cat([embeddings, predicted], dim=1)
hidden_states, _ = self.lstm(embeddings)
hidden_states = hidden_states[:, -1, :]
outputs = self.linear(hidden_states)
predicted = torch.max(outputs, 1)[1]
sampled_ids[:, i] = predicted
predicted = predicted.unsqueeze(1)
return sampled_ids
if __name__ == '__main__':
import torchvision.transforms as transforms
import warnings
warnings.filterwarnings("ignore")
#
extractor = VisualFeatureExtractor(model_name='resnet152')
mlc = MLC(fc_in_features=extractor.out_features)
co_att = CoAttention(visual_size=extractor.out_features)
sent_lstm = SentenceLSTM()
word_lstm = WordLSTM(embed_size=512, hidden_size=512, vocab_size=100, num_layers=1)
images = torch.randn((4, 3, 224, 224))
captions = torch.ones((4, 10)).long()
hidden_state = torch.randn((4, 1, 512))
# # image_file = '../data/images/CXR2814_IM-1239-1001.png'
# # # images = Image.open(image_file).convert('RGB')
# # # captions = torch.ones((1, 10)).long()
# # # hidden_state = torch.randn((10, 512))
# #
# norm = transforms.Normalize((0.485, 0.456, 0.406), (0.229, 0.224, 0.225))
#
# transform = transforms.Compose([
# transforms.Resize(256),
# transforms.TenCrop(224),
# transforms.Lambda(lambda crops: torch.stack([norm(transforms.ToTensor()(crop)) for crop in crops])),
# ])
# images = transform(images)
# images.unsqueeze_(0)
#
# # bs, ncrops, c, h, w = images.size()
# # images = images.view(-1, c, h, w)
#
print("images:{}".format(images.shape))
print("captions:{}".format(captions.shape))
print("hidden_states:{}".format(hidden_state.shape))
visual_features, avg_features = extractor.forward(images)
print("visual_features:{}".format(visual_features.shape))
print("avg features:{}".format(avg_features.shape))
tags, semantic_features = mlc.forward(avg_features)
print("tags:{}".format(tags.shape))
print("semantic_features:{}".format(semantic_features.shape))
ctx, alpht_v, alpht_a = co_att.forward(avg_features, semantic_features, hidden_state)
print("ctx:{}".format(ctx.shape))
print("alpht_v:{}".format(alpht_v.shape))
print("alpht_a:{}".format(alpht_a.shape))
topic, p_stop, hidden_state, states = sent_lstm.forward(ctx, hidden_state)
# p_stop_avg = p_stop.view(bs, ncrops, -1).mean(1)
print("Topic:{}".format(topic.shape))
print("P_STOP:{}".format(p_stop.shape))
# print("P_stop_avg:{}".format(p_stop_avg.shape))
words = word_lstm.forward(topic, captions)
print("words:{}".format(words.shape))
cam = torch.mul(visual_features, alpht_v.view(alpht_v.shape[0], alpht_v.shape[1], 1, 1)).sum(1)
cam.squeeze_()
cam = cam.cpu().data.numpy()
for i in range(cam.shape[0]):
heatmap = cam[i]
heatmap = heatmap / np.max(heatmap)
print(heatmap.shape)