Method for robustly classifying pictures by using sparse network based on retention dynamics process

A dynamic and sparse technology, applied in neural learning methods, biological neural network models, instruments, etc., can solve the problem that fine-tuning is not necessarily useful, and achieve the effect of speeding up inference, reducing occupancy, and excellent adversarial robustness.

Pending Publication Date: 2022-07-01
NANJING UNIV
View PDF0 Cites 0 Cited by
  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

However, fine-tuning a pruned model with inherited weights only yields comparable or worse performance than training the model with randomly initialized weights, suggesting that inherited "important" weights are not necessarily useful for fine-tuning

Method used

the structure of the environmentally friendly knitted fabric provided by the present invention; figure 2 Flow chart of the yarn wrapping machine for environmentally friendly knitted fabrics and storage devices; image 3 Is the parameter map of the yarn covering machine
View more

Image

Smart Image Click on the blue labels to locate them in the text.
Viewing Examples
Smart Image
  • Method for robustly classifying pictures by using sparse network based on retention dynamics process
  • Method for robustly classifying pictures by using sparse network based on retention dynamics process
  • Method for robustly classifying pictures by using sparse network based on retention dynamics process

Examples

Experimental program
Comparison scheme
Effect test

Embodiment Construction

[0072] The task objective of the present invention is to use a sparse network and train it adversarially to obtain an adversarially robust image classifier. Each step of the present invention will be described below according to examples.

[0073] Dataset introduction: The dataset is CIFAR-10, see figure 1 , contains a total of 10 categories of RGB color images: airplanes, cars, birds, cats, deer, dogs, frogs, horses, boats, and trucks. The size of the images is 32×32, and there are a total of 50,000 training images and 10,000 test images in the dataset.

[0074] Network introduction: The network structure adopts the classic convolutional neural network VGG-16, see figure 2 , the network is mainly composed of 5 convolutional layers and 3 fully connected layers, each convolutional layer is followed by a pooling layer to expand the receptive field, and each fully connected layer is followed by a dropout layer to reduce overfitting , and finally use a softmax layer for normal...

the structure of the environmentally friendly knitted fabric provided by the present invention; figure 2 Flow chart of the yarn wrapping machine for environmentally friendly knitted fabrics and storage devices; image 3 Is the parameter map of the yarn covering machine
Login to view more

PUM

No PUM Login to view more

Abstract

The invention provides a method for robustly classifying pictures by using a sparse network based on a retention dynamic process, which combines a neural tangent kernel theory and an adversarial training dynamic process, obtains respective adversarial samples of the sparse network and a dense network by using adversarial attacks, and obtains the sparse network suitable for adversarial training. And adversarial training is carried out on the picture set by using the sparse network to obtain a classifier, so that the adversarial attack can be effectively resisted. The performance of the sparse network obtained by the method is equivalent to the performance of the original dense network, the adversarial robustness is superior to that of the recently proposed Inverse Weight Ineritance2020, the target sparse network is found during initialization, the adversarial training-pruning process does not need to be iteratively carried out like the existing method, the training time is greatly shortened, and the training efficiency is improved. Therefore, the method is superior to an existing same-task method, and deployment of the robust adversarial neural network on resource limited equipment becomes possible.

Description

technical field [0001] The invention belongs to the field of picture classification and confrontation training in machine learning, and in particular relates to a method for robustly classifying pictures using a sparse network based on a preserved dynamics process. Background technique [0002] Deep neural networks are widely used as state-of-the-art machine learning classification systems due to their huge performance gains in recent years. At the same time, as Szegedy points out, state-of-the-art deep neural networks are often vulnerable to adversarial examples that are distinguishable to the human eye but can trick classifiers into making arbitrary predictions. Such non-ideal properties may make deep neural networks unsuitable for security-sensitive applications. Various adversarial defense methods were subsequently proposed to deal with adversarial examples. However, most defense methods are quickly broken by new adversarial attack methods. Adversarial training propos...

Claims

the structure of the environmentally friendly knitted fabric provided by the present invention; figure 2 Flow chart of the yarn wrapping machine for environmentally friendly knitted fabrics and storage devices; image 3 Is the parameter map of the yarn covering machine
Login to view more

Application Information

Patent Timeline
no application Login to view more
Patent Type & Authority Applications(China)
IPC IPC(8): G06N3/04G06N3/08G06V10/764G06V10/82G06K9/62
CPCG06N3/082G06N3/084G06N3/047G06N3/045G06F18/241G06F18/2415
Inventor 张岩郑鹏飞谢吉雨张化鹏贾晓玉
Owner NANJING UNIV
Who we serve
  • R&D Engineer
  • R&D Manager
  • IP Professional
Why Eureka
  • Industry Leading Data Capabilities
  • Powerful AI technology
  • Patent DNA Extraction
Social media
Try Eureka
PatSnap group products