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run_placesCNN_unified.py
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run_placesCNN_unified.py
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# PlacesCNN to predict the scene category, attribute, and class activation map in a single pass
# by Bolei Zhou, sep 2, 2017
# updated, making it compatible to pytorch 1.x in a hacky way
import torch
from torch.autograd import Variable as V
import torchvision.models as models
from torchvision import transforms as trn
from torch.nn import functional as F
import os
import numpy as np
import cv2
from PIL import Image
# hacky way to deal with the Pytorch 1.0 update
def recursion_change_bn(module):
if isinstance(module, torch.nn.BatchNorm2d):
module.track_running_stats = 1
else:
for i, (name, module1) in enumerate(module._modules.items()):
module1 = recursion_change_bn(module1)
return module
def load_labels():
# prepare all the labels
# scene category relevant
file_name_category = 'categories_places365.txt'
if not os.access(file_name_category, os.W_OK):
synset_url = 'https://raw.githubusercontent.com/csailvision/places365/master/categories_places365.txt'
os.system('wget ' + synset_url)
classes = list()
with open(file_name_category) as class_file:
for line in class_file:
classes.append(line.strip().split(' ')[0][3:])
classes = tuple(classes)
# indoor and outdoor relevant
file_name_IO = 'IO_places365.txt'
if not os.access(file_name_IO, os.W_OK):
synset_url = 'https://raw.githubusercontent.com/csailvision/places365/master/IO_places365.txt'
os.system('wget ' + synset_url)
with open(file_name_IO) as f:
lines = f.readlines()
labels_IO = []
for line in lines:
items = line.rstrip().split()
labels_IO.append(int(items[-1]) -1) # 0 is indoor, 1 is outdoor
labels_IO = np.array(labels_IO)
# scene attribute relevant
file_name_attribute = 'labels_sunattribute.txt'
if not os.access(file_name_attribute, os.W_OK):
synset_url = 'https://raw.githubusercontent.com/csailvision/places365/master/labels_sunattribute.txt'
os.system('wget ' + synset_url)
with open(file_name_attribute) as f:
lines = f.readlines()
labels_attribute = [item.rstrip() for item in lines]
file_name_W = 'W_sceneattribute_wideresnet18.npy'
if not os.access(file_name_W, os.W_OK):
synset_url = 'http://places2.csail.mit.edu/models_places365/W_sceneattribute_wideresnet18.npy'
os.system('wget ' + synset_url)
W_attribute = np.load(file_name_W)
return classes, labels_IO, labels_attribute, W_attribute
def hook_feature(module, input, output):
features_blobs.append(np.squeeze(output.data.cpu().numpy()))
def returnCAM(feature_conv, weight_softmax, class_idx):
# generate the class activation maps upsample to 256x256
size_upsample = (256, 256)
nc, h, w = feature_conv.shape
output_cam = []
for idx in class_idx:
cam = weight_softmax[class_idx].dot(feature_conv.reshape((nc, h*w)))
cam = cam.reshape(h, w)
cam = cam - np.min(cam)
cam_img = cam / np.max(cam)
cam_img = np.uint8(255 * cam_img)
output_cam.append(cv2.resize(cam_img, size_upsample))
return output_cam
def returnTF():
# load the image transformer
tf = trn.Compose([
trn.Resize((224,224)),
trn.ToTensor(),
trn.Normalize([0.485, 0.456, 0.406], [0.229, 0.224, 0.225])
])
return tf
def load_model():
# this model has a last conv feature map as 14x14
model_file = 'wideresnet18_places365.pth.tar'
if not os.access(model_file, os.W_OK):
os.system('wget http://places2.csail.mit.edu/models_places365/' + model_file)
os.system('wget https://raw.githubusercontent.com/csailvision/places365/master/wideresnet.py')
import wideresnet
model = wideresnet.resnet18(num_classes=365)
checkpoint = torch.load(model_file, map_location=lambda storage, loc: storage)
state_dict = {str.replace(k,'module.',''): v for k,v in checkpoint['state_dict'].items()}
model.load_state_dict(state_dict)
# hacky way to deal with the upgraded batchnorm2D and avgpool layers...
for i, (name, module) in enumerate(model._modules.items()):
module = recursion_change_bn(model)
model.avgpool = torch.nn.AvgPool2d(kernel_size=14, stride=1, padding=0)
model.eval()
# the following is deprecated, everything is migrated to python36
## if you encounter the UnicodeDecodeError when use python3 to load the model, add the following line will fix it. Thanks to @soravux
#from functools import partial
#import pickle
#pickle.load = partial(pickle.load, encoding="latin1")
#pickle.Unpickler = partial(pickle.Unpickler, encoding="latin1")
#model = torch.load(model_file, map_location=lambda storage, loc: storage, pickle_module=pickle)
model.eval()
# hook the feature extractor
features_names = ['layer4','avgpool'] # this is the last conv layer of the resnet
for name in features_names:
model._modules.get(name).register_forward_hook(hook_feature)
return model
# load the labels
classes, labels_IO, labels_attribute, W_attribute = load_labels()
# load the model
features_blobs = []
model = load_model()
# load the transformer
tf = returnTF() # image transformer
# get the softmax weight
params = list(model.parameters())
weight_softmax = params[-2].data.numpy()
weight_softmax[weight_softmax<0] = 0
# load the test image
img_url = 'http://places.csail.mit.edu/demo/6.jpg'
os.system('wget %s -q -O test.jpg' % img_url)
img = Image.open('test.jpg')
input_img = V(tf(img).unsqueeze(0))
# forward pass
logit = model.forward(input_img)
h_x = F.softmax(logit, 1).data.squeeze()
probs, idx = h_x.sort(0, True)
probs = probs.numpy()
idx = idx.numpy()
print('RESULT ON ' + img_url)
# output the IO prediction
io_image = np.mean(labels_IO[idx[:10]]) # vote for the indoor or outdoor
if io_image < 0.5:
print('--TYPE OF ENVIRONMENT: indoor')
else:
print('--TYPE OF ENVIRONMENT: outdoor')
# output the prediction of scene category
print('--SCENE CATEGORIES:')
for i in range(0, 5):
print('{:.3f} -> {}'.format(probs[i], classes[idx[i]]))
# output the scene attributes
responses_attribute = W_attribute.dot(features_blobs[1])
idx_a = np.argsort(responses_attribute)
print('--SCENE ATTRIBUTES:')
print(', '.join([labels_attribute[idx_a[i]] for i in range(-1,-10,-1)]))
# generate class activation mapping
print('Class activation map is saved as cam.jpg')
CAMs = returnCAM(features_blobs[0], weight_softmax, [idx[0]])
# render the CAM and output
img = cv2.imread('test.jpg')
height, width, _ = img.shape
heatmap = cv2.applyColorMap(cv2.resize(CAMs[0],(width, height)), cv2.COLORMAP_JET)
result = heatmap * 0.4 + img * 0.5
cv2.imwrite('cam.jpg', result)