FS-BAN: Born-Again Networks for Domain Generalization Few-Shot Classification

08/23/2022
by   Yunqing Zhao, et al.
0

Conventional Few-shot classification (FSC) aims to recognize samples from novel classes given limited labeled data. Recently, domain generalization FSC (DG-FSC) has been proposed with the goal to recognize novel class samples from unseen domains. DG-FSC poses considerable challenges to many models due to the domain shift between base classes (used in training) and novel classes (encountered in evaluation). In this work, we make two novel contributions to tackle DG-FSC. Our first contribution is to propose Born-Again Network (BAN) episodic training and comprehensively investigate its effectiveness for DG-FSC. As a specific form of knowledge distillation, BAN has been shown to achieve improved generalization in conventional supervised classification with a closed-set setup. This improved generalization motivates us to study BAN for DG-FSC, and we show that BAN is promising to address the domain shift encountered in DG-FSC. Building on the encouraging finding, our second (major) contribution is to propose few-shot BAN, FS-BAN, a novel BAN approach for DG-FSC. Our proposed FS-BAN includes novel multi-task learning objectives: Mutual Regularization, Mismatched Teacher and Meta-Control Temperature, each of these is specifically designed to overcome central and unique challenges in DG-FSC, namely overfitting and domain discrepancy. We analyze different design choices of these techniques. We conduct comprehensive quantitative and qualitative analysis and evaluation using six datasets and three baseline models. The results suggest that our proposed FS-BAN consistently improves the generalization performance of baseline models and achieves state-of-the-art accuracy for DG-FSC.

READ FULL TEXT

page 1

page 3

page 4

research
08/10/2020

Cooperative Bi-path Metric for Few-shot Learning

Given base classes with sufficient labeled samples, the target of few-sh...
research
12/27/2021

Few-Shot Classification in Unseen Domains by Episodic Meta-Learning Across Visual Domains

Few-shot classification aims to carry out classification given only few ...
research
09/11/2019

Few-Shot Classification on Unseen Domains by Learning Disparate Modulators

Although few-shot learning studies have advanced rapidly with the help o...
research
06/29/2023

Understanding the Overfitting of the Episodic Meta-training

Despite the success of two-stage few-shot classification methods, in the...
research
04/08/2019

A Closer Look at Few-shot Classification

Few-shot classification aims to learn a classifier to recognize unseen c...
research
07/17/2020

Explanation-Guided Training for Cross-Domain Few-Shot Classification

Cross-domain few-shot classification task (CD-FSC) combines few-shot cla...
research
04/12/2022

Few-shot Forgery Detection via Guided Adversarial Interpolation

Realistic visual media synthesis is becoming a critical societal issue w...

Please sign up or login with your details

Forgot password? Click here to reset