Co-supervised learning paradigm with conditional generative adversarial networks for sample-efficient classification

12/27/2022
by   Hao Zhen, et al.
0

Classification using supervised learning requires annotating a large amount of classes-balanced data for model training and testing. This has practically limited the scope of applications with supervised learning, in particular deep learning. To address the issues associated with limited and imbalanced data, this paper introduces a sample-efficient co-supervised learning paradigm (SEC-CGAN), in which a conditional generative adversarial network (CGAN) is trained alongside the classifier and supplements semantics-conditioned, confidence-aware synthesized examples to the annotated data during the training process. In this setting, the CGAN not only serves as a co-supervisor but also provides complementary quality examples to aid the classifier training in an end-to-end fashion. Experiments demonstrate that the proposed SEC-CGAN outperforms the external classifier GAN (EC-GAN) and a baseline ResNet-18 classifier. For the comparison, all classifiers in above methods adopt the ResNet-18 architecture as the backbone. Particularly, for the Street View House Numbers dataset, using the 5 achieved by SEC-CGAN as opposed to 88.59 classifier; for the highway image dataset, using the 10 test accuracy of 98.27 and 95.52

READ FULL TEXT

page 9

page 10

page 11

research
12/26/2020

EC-GAN: Low-Sample Classification using Semi-Supervised Algorithms and GANs

Semi-supervised learning has been gaining attention as it allows for per...
research
05/09/2017

Generative Adversarial Trainer: Defense to Adversarial Perturbations with GAN

We propose a novel technique to make neural network robust to adversaria...
research
10/18/2019

Semi-supervised Learning using Adversarial Training with Good and Bad Samples

In this work, we investigate semi-supervised learning (SSL) for image cl...
research
08/12/2020

Mitigating Dataset Imbalance via Joint Generation and Classification

Supervised deep learning methods are enjoying enormous success in many p...
research
11/29/2022

Balanced Semi-Supervised Generative Adversarial Network for Damage Assessment from Low-Data Imbalanced-Class Regime

In recent years, applying deep learning (DL) to assess structural damage...
research
04/21/2021

Federated Traffic Synthesizing and Classification Using Generative Adversarial Networks

With the fast growing demand on new services and applications as well as...

Please sign up or login with your details

Forgot password? Click here to reset