Jointly Optimized Classifiers for Few-Shot Class-Incremental Learning

弹丸 计算机科学 人工智能 班级(哲学) 渐进式学习 机器学习 一次性 模式识别(心理学) 工程类 化学 机械工程 有机化学
作者
Sichao Fu,Qinmu Peng,Xiaorui Wang,Yang He,Wenhao Qiu,Bin Zou,Duanquan Xu,Xiao‐Yuan Jing,Xinge You
出处
期刊:IEEE transactions on emerging topics in computational intelligence [Institute of Electrical and Electronics Engineers]
卷期号:8 (5): 3316-3326 被引量:1
标识
DOI:10.1109/tetci.2024.3375509
摘要

Few-shot class-incremental learning (FSCIL) has recently aroused widespread research interest, which aims to continually learn new class knowledge from a few labeled samples without ignoring the previous concept. One typical method is graph-based FSCIL (GFSCIL), which tends to design more complex message-passing schemes to make the classifiers' decision boundary clearer. However, it would result in poor extrapolating ability because no effort was paid to consider the effectiveness of the trained feature backbone and the learned topology structure. In this paper, we propose a simple and effective GFSCIL framework to solve the above-mentioned problem, termed Jointly Optimized Classifiers (JOC). Specifically, a simple multi-task training module incorporates both classification and auxiliary task loss to jointly supervise the feature backbone trained on the base classes. By doing so, our proposed JOC can effectively improve the robustness of the trained feature backbone, without the utilization of extra datasets or complex feature backbones. To avoid new class overfitting and old class knowledge forgetting issues of the trained feature backbone, the decouple learning strategy is adopted to fix the feature backbone parameters and only optimize the classifier parameters for the new classes. Finally, a spatial-channel graph attention network is designed to simultaneously preserve the global and local similar relationships between all classes for improving the generalization performance of classifiers. To demonstrate the effectiveness of the proposed method, extensive experiments were conducted on three popular datasets. Experimental results show that our proposed JOC outperforms many existing state-of-the-art FSCIL.

科研通智能强力驱动
Strongly Powered by AbleSci AI
科研通是完全免费的文献互助平台,具备全网最快的应助速度,最高的求助完成率。 对每一个文献求助,科研通都将尽心尽力,给求助人一个满意的交代。
实时播报
zml36完成签到,获得积分10
2秒前
FashionBoy应助zcywaup采纳,获得10
2秒前
灵巧如花完成签到,获得积分10
2秒前
光亮绮山完成签到 ,获得积分10
2秒前
2秒前
3秒前
ZZ完成签到,获得积分10
5秒前
6秒前
6秒前
桐桐应助仙女的小可爱采纳,获得10
6秒前
7秒前
乐观的颦发布了新的文献求助10
7秒前
墨风发布了新的文献求助10
9秒前
liyongxing125完成签到,获得积分10
10秒前
菲菲完成签到 ,获得积分10
10秒前
study发布了新的文献求助10
10秒前
李健应助haha采纳,获得10
13秒前
无聊的怀莲完成签到,获得积分10
14秒前
笨笨的曼文完成签到,获得积分20
14秒前
14秒前
乐观猕猴桃完成签到 ,获得积分10
16秒前
三笠发布了新的文献求助20
17秒前
SciGPT应助收手吧大哥采纳,获得10
17秒前
summer夏完成签到,获得积分10
18秒前
蜻蜓完成签到 ,获得积分10
18秒前
卢静怡完成签到,获得积分10
18秒前
微七完成签到,获得积分10
20秒前
包子完成签到,获得积分10
21秒前
酷波er应助1121采纳,获得10
22秒前
hay完成签到,获得积分10
23秒前
Akim应助任性采纳,获得10
25秒前
25秒前
26秒前
26秒前
柯镇恶完成签到,获得积分10
28秒前
隐形曼青应助fangsci采纳,获得10
28秒前
28秒前
29秒前
29秒前
苏喜财发布了新的文献求助10
30秒前
高分求助中
(应助此贴封号)【重要!!请各用户(尤其是新用户)详细阅读】【科研通的精品贴汇总】 10000
Developing Genetic Editing Tools for Lysobacter 2000
Моделирование процессов самоорганизации в кристаллообразующих системах 1000
History of U.S. Space Surveillance and Satellite Cataloging 1000
Adhesion Science: Principles & Practice 800
Signals, Systems, and Signal Processing 610
Fundamentals of Pharmaceutical and Biologics Regulations: A Global Perspective, Second Edition 600
热门求助领域 (近24小时)
化学 材料科学 医学 生物 纳米技术 工程类 有机化学 化学工程 生物化学 计算机科学 物理 内科学 复合材料 催化作用 物理化学 光电子学 电极 细胞生物学 基因 无机化学
热门帖子
关注 科研通微信公众号,转发送积分 6524820
求助须知:如何正确求助?哪些是违规求助? 8318144
关于积分的说明 17801009
捐赠科研通 5626628
什么是DOI,文献DOI怎么找? 2928863
邀请新用户注册赠送积分活动 1905539
关于科研通互助平台的介绍 1765444