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Proof_verify.py
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# -*- coding:utf-8 -*-
# Experimental proof for our Eq.5
import argparse
import cv2
import numpy as np
import torch
from torchvision import models
class FeatureExtractor():
""" Class for extracting activations and
registering gradients from targetted intermediate layers """
def __init__(self, model, target_layers):
self.model = model
self.target_layers = target_layers
self.gradients = []
def save_gradient(self, grad):
self.gradients.append(grad)
def __call__(self, x):
outputs = []
self.gradients = []
for name, module in self.model._modules.items():
x = module(x)
if name in self.target_layers:
x.register_hook(self.save_gradient)
outputs += [x]
return outputs, x
class ModelOutputs():
""" Class for making a forward pass, and getting:
1. The network output.
2. Activations from intermeddiate targetted layers.
3. Gradients from intermeddiate targetted layers. """
def __init__(self, model, target_layers):
self.model = model
self.feature_extractor = FeatureExtractor(self.model.features, target_layers)
def get_gradients(self):
return self.feature_extractor.gradients
def __call__(self, x):
target_activations, output = self.feature_extractor(x)
output = output.view(output.size(0), -1)
output = self.model.classifier(output)
return target_activations, output
def preprocess_image(img):
means = [0.485, 0.456, 0.406]
stds = [0.229, 0.224, 0.225]
preprocessed_img = img.copy()[:, :, ::-1]
for i in range(3):
preprocessed_img[:, :, i] = preprocessed_img[:, :, i] - means[i]
preprocessed_img[:, :, i] = preprocessed_img[:, :, i] / stds[i]
preprocessed_img = \
np.ascontiguousarray(np.transpose(preprocessed_img, (2, 0, 1)))
preprocessed_img = torch.from_numpy(preprocessed_img)
preprocessed_img.unsqueeze_(0)
input = preprocessed_img.requires_grad_(True)
return input
class GradCam:
def __init__(self, model, target_layer_names, use_cuda):
self.model = model
self.model.eval()
self.cuda = use_cuda
if self.cuda:
self.model = model.cuda()
self.extractor = ModelOutputs(self.model, target_layer_names)
def forward(self, input):
return self.model(input)
def __call__(self, input, index=-1):
if self.cuda:
features, output = self.extractor(input.cuda())
else:
features, output = self.extractor(input)
if index == -1:
index = np.argmax(output.cpu().data.numpy())
synset = [l.strip() for l in open('./synset.txt').readlines()]
print("class of interest: ", synset[index])
one_hot = np.zeros((1, output.size()[-1]), dtype=np.float32)
one_hot[0][index] = 1
one_hot = torch.from_numpy(one_hot).requires_grad_(True)
if self.cuda:
one_hot = torch.sum(one_hot.cuda() * output)
else:
one_hot = torch.sum(one_hot * output)
self.model.features.zero_grad()
self.model.classifier.zero_grad()
one_hot.backward(retain_graph=True)
param = list(self.model.parameters()) #read the param
bias_term = np.sum(param[len(param)-1].grad.numpy() * param[len(param)-1].data.numpy())+\
np.sum(param[len(param)-3].grad.numpy() * param[len(param)-3].data.numpy())+\
np.sum(param[len(param)-5].grad.numpy() * param[len(param)-5].data.numpy()) #three FC layers
grads_val = self.extractor.get_gradients()[-1].cpu().data.numpy()
target = features[-1]
target = target.cpu().data.numpy()[0, :]
multi = np.sum(target * grads_val[0, :])
print ("class score is %f" %(output[0][index]))
print ("gradients*feature is %f" %(multi))
print ("bias_term is %f" %(bias_term))
print ("class_score-gradients*feature-bias_term= %f" %(output[0][index]-multi-bias_term))
def get_args():
parser = argparse.ArgumentParser()
parser.add_argument('--use-cuda', action='store_true', default=False,
help='Use NVIDIA GPU acceleration')
parser.add_argument('--image-path', type=str, default='./examples/both.png',
help='Input image path')
parser.add_argument('--target-index', type=int, default= -1,
help='class of interest')
args = parser.parse_args()
args.use_cuda = args.use_cuda and torch.cuda.is_available()
if args.use_cuda:
print("Using GPU for acceleration")
else:
print("Using CPU for computation")
return args
if __name__ == '__main__':
""" python grad_cam.py <path_to_image>
class_score-gradients*feature-bias_term """
args = get_args()
# Can work with any model, but it assumes that the model has a
# feature method, and a classifier method,
# as in the VGG models in torchvision.
grad_cam = GradCam(model=models.vgg16(pretrained=True), \
target_layer_names=["30"], use_cuda=args.use_cuda)
print (models.vgg16(pretrained=True))
img = cv2.imread(args.image_path, 1)
img = np.float32(cv2.resize(img, (224, 224))) / 255
input = preprocess_image(img)
target_index = args.target_index
grad_cam(input, target_index)