重庆分公司,新征程启航

为企业提供网站建设、域名注册、服务器等服务

pytorch实现用Resnet提取特征并保存为txt文件的方法-创新互联

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。

我们提供的服务有:成都做网站、网站设计、微信公众号开发、网站优化、网站认证、东港ssl等。为近1000家企事业单位解决了网站和推广的问题。提供周到的售前咨询和贴心的售后服务,是有科学管理、有技术的东港网站制作公司

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)

本文题目:pytorch实现用Resnet提取特征并保存为txt文件的方法-创新互联
标题路径:http://cqcxhl.com/article/disepd.html

其他资讯

在线咨询
服务热线
服务热线:028-86922220
TOP