- PyTorch Tutorial
- PyTorch - Home
- PyTorch - Introduction
- PyTorch - Installation
- Mathematical Building Blocks of Neural Networks
- PyTorch - Neural Network Basics
- Universal Workflow of Machine Learning
- Machine Learning vs. Deep Learning
- Implementing First Neural Network
- Neural Networks to Functional Blocks
- PyTorch - Terminologies
- PyTorch - Loading Data
- PyTorch - Linear Regression
- PyTorch - Convolutional Neural Network
- PyTorch - Recurrent Neural Network
- PyTorch - Datasets
- PyTorch - Introduction to Convents
- Training a Convent from Scratch
- PyTorch - Feature Extraction in Convents
- PyTorch - Visualization of Convents
- Sequence Processing with Convents
- PyTorch - Word Embedding
- PyTorch - Recursive Neural Networks
- PyTorch Useful Resources
- PyTorch - Quick Guide
- PyTorch - Useful Resources
- PyTorch - Discussion
PyTorch - Feature Extraction in Convents
Convolutional neural networks include a primary feature, extraction. Following steps are used to implement the feature extraction of convolutional neural network.
Step 1
Import the respective models to create the feature extraction model with “PyTorch”.
import torch import torch.nn as nn from torchvision import models
Step 2
Create a class of feature extractor which can be called as and when needed.
class Feature_extractor(nn.module): def forward(self, input): self.feature = input.clone() return input new_net = nn.Sequential().cuda() # the new network target_layers = [conv_1, conv_2, conv_4] # layers you want to extract` i = 1 for layer in list(cnn): if isinstance(layer,nn.Conv2d): name = "conv_"+str(i) art_net.add_module(name,layer) if name in target_layers: new_net.add_module("extractor_"+str(i),Feature_extractor()) i+=1 if isinstance(layer,nn.ReLU): name = "relu_"+str(i) new_net.add_module(name,layer) if isinstance(layer,nn.MaxPool2d): name = "pool_"+str(i) new_net.add_module(name,layer) new_net.forward(your_image) print (new_net.extractor_3.feature)
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