接触pytorch一天,发现pytorch上手的确比TensorFlow更快。可以更方便地实现用预训练的网络提特征。
以下是提取一张jpg图像的特征的程序:
# -*- coding: utf-8 -*-
import os.path
import torch
import torch.nn as nn
from torchvision import models, transforms
from torch.autograd import Variable
import numpy as np
from PIL import Image
features_dir = './features'
img_path = "hymenoptera_data/train/ants/0013035.jpg"
file_name = img_path.split('/')[-1]
feature_path = os.path.join(features_dir, file_name + '.txt')
transform1 = transforms.Compose([
transforms.Scale(256),
transforms.CenterCrop(224),
transforms.ToTensor() ]
)
img = Image.open(img_path)
img1 = transform1(img)
#resnet18 = models.resnet18(pretrained = True)
resnet50_feature_extractor = models.resnet50(pretrained = True)
resnet50_feature_extractor.fc = nn.Linear(2048, 2048)
torch.nn.init.eye(resnet50_feature_extractor.fc.weight)
for param in resnet50_feature_extractor.parameters():
param.requires_grad = False
#resnet152 = models.resnet152(pretrained = True)
#densenet201 = models.densenet201(pretrained = True)
x = Variable(torch.unsqueeze(img1, dim=0).float(), requires_grad=False)
#y1 = resnet18(x)
y = resnet50_feature_extractor(x)
y = y.data.numpy()
np.savetxt(feature_path, y, delimiter=',')
#y3 = resnet152(x)
#y4 = densenet201(x)
y_ = np.loadtxt(feature_path, delimiter=',').reshape(1, 2048)
以下是提取一个文件夹下所有jpg、jpeg图像的程序:
# -*- coding: utf-8 -*-
import os, torch, glob
import numpy as np
from torch.autograd import Variable
from PIL import Image
from torchvision import models, transforms
import torch.nn as nn
import shutil
data_dir = './hymenoptera_data'
features_dir = './features'
shutil.copytree(data_dir, os.path.join(features_dir, data_dir[2:]))
def extractor(img_path, saved_path, net, use_gpu):
transform = transforms.Compose([
transforms.Scale(256),
transforms.CenterCrop(224),
transforms.ToTensor() ]
)
img = Image.open(img_path)
img = transform(img)
x = Variable(torch.unsqueeze(img, dim=0).float(), requires_grad=False)
if use_gpu:
x = x.cuda()
net = net.cuda()
y = net(x).cpu()
y = y.data.numpy()
np.savetxt(saved_path, y, delimiter=',')
if __name__ == '__main__':
extensions = ['jpg', 'jpeg', 'JPG', 'JPEG']
files_list = []
sub_dirs = [x[0] for x in os.walk(data_dir) ]
sub_dirs = sub_dirs[1:]
for sub_dir in sub_dirs:
for extention in extensions:
file_glob = os.path.join(sub_dir, '*.' + extention)
files_list.extend(glob.glob(file_glob))
resnet50_feature_extractor = models.resnet50(pretrained = True)
resnet50_feature_extractor.fc = nn.Linear(2048, 2048)
torch.nn.init.eye(resnet50_feature_extractor.fc.weight)
for param in resnet50_feature_extractor.parameters():
param.requires_grad = False
use_gpu = torch.cuda.is_available()
for x_path in files_list:
print(x_path)
fx_path = os.path.join(features_dir, x_path[2:] + '.txt')
extractor(x_path, fx_path, resnet50_feature_extractor, use_gpu)
另外最近发现一个很简单的提取不含FC层的网络的方法:
resnet = models.resnet152(pretrained=True)
modules = list(resnet.children())[:-1] # delete the last fc layer.
convnet = nn.Sequential(*modules)
另一种更简单的方法:
resnet = models.resnet152(pretrained=True) del resnet.fc
以上这篇pytorch实现用Resnet提取特征并保存为txt文件的方法就是小编分享给大家的全部内容了,希望能给大家一个参考,也希望大家多多支持。
免责声明:本站文章均来自网站采集或用户投稿,网站不提供任何软件下载或自行开发的软件!
如有用户或公司发现本站内容信息存在侵权行为,请邮件告知! 858582#qq.com
暂无“pytorch实现用Resnet提取特征并保存为txt文件的方法”评论...
RTX 5090要首发 性能要翻倍!三星展示GDDR7显存
三星在GTC上展示了专为下一代游戏GPU设计的GDDR7内存。
首次推出的GDDR7内存模块密度为16GB,每个模块容量为2GB。其速度预设为32 Gbps(PAM3),但也可以降至28 Gbps,以提高产量和初始阶段的整体性能和成本效益。
据三星表示,GDDR7内存的能效将提高20%,同时工作电压仅为1.1V,低于标准的1.2V。通过采用更新的封装材料和优化的电路设计,使得在高速运行时的发热量降低,GDDR7的热阻比GDDR6降低了70%。
更新动态
2025年10月25日
2025年10月25日
- 小骆驼-《草原狼2(蓝光CD)》[原抓WAV+CUE]
- 群星《欢迎来到我身边 电影原声专辑》[320K/MP3][105.02MB]
- 群星《欢迎来到我身边 电影原声专辑》[FLAC/分轨][480.9MB]
- 雷婷《梦里蓝天HQⅡ》 2023头版限量编号低速原抓[WAV+CUE][463M]
- 群星《2024好听新歌42》AI调整音效【WAV分轨】
- 王思雨-《思念陪着鸿雁飞》WAV
- 王思雨《喜马拉雅HQ》头版限量编号[WAV+CUE]
- 李健《无时无刻》[WAV+CUE][590M]
- 陈奕迅《酝酿》[WAV分轨][502M]
- 卓依婷《化蝶》2CD[WAV+CUE][1.1G]
- 群星《吉他王(黑胶CD)》[WAV+CUE]
- 齐秦《穿乐(穿越)》[WAV+CUE]
- 发烧珍品《数位CD音响测试-动向效果(九)》【WAV+CUE】
- 邝美云《邝美云精装歌集》[DSF][1.6G]
- 吕方《爱一回伤一回》[WAV+CUE][454M]