计算机科学
人工智能
杠杆(统计)
机器学习
一般化
领域(数学分析)
域适应
试验数据
特征(语言学)
不变(物理)
活动识别
水准点(测量)
模式识别(心理学)
分类器(UML)
数学
数学分析
语言学
哲学
大地测量学
数学物理
程序设计语言
地理
作者
Xin Qin,Jindong Wang,Yiqiang Chen,Lu Wang,Xinlong Jiang
出处
期刊:ACM Transactions on Intelligent Systems and Technology
[Association for Computing Machinery]
日期:2022-08-02
卷期号:14 (1): 1-21
被引量:20
摘要
Human activity recognition requires the efforts to build a generalizable model using the training datasets with the hope to achieve good performance in test datasets. However, in real applications, the training and testing datasets may have totally different distributions due to various reasons such as different body shapes, acting styles, and habits, damaging the model’s generalization performance. While such a distribution gap can be reduced by existing domain adaptation approaches, they typically assume that the test data can be accessed in the training stage, which is not realistic. In this article, we consider a more practical and challenging scenario: domain-generalized activity recognition (DGAR) where the test dataset cannot be accessed during training. To this end, we propose Adaptive Feature Fusion for Activity Recognition (AFFAR) , a domain generalization approach that learns to fuse the domain-invariant and domain-specific representations to improve the model’s generalization performance. AFFAR takes the best of both worlds where domain-invariant representations enhance the transferability across domains and domain-specific representations leverage the model discrimination power from each domain. Extensive experiments on three public HAR datasets show its effectiveness. Furthermore, we apply AFFAR to a real application, i.e., the diagnosis of Children’s Attention Deficit Hyperactivity Disorder (ADHD), which also demonstrates the superiority of our approach.
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