Distributionally robust semi-supervised learning for people-centric sensing
conference contribution
posted on 2024-11-03, 14:36authored byKaixuan Chen, Lina Yao, Dalin Zhang, Xiaojun ChangXiaojun Chang, Guodong Long, Sen Wang
Semi-supervised learning is crucial for alleviating labelling burdens in people-centric sensing. However, humangenerated data inherently suffer from distribution shift in semi-supervised learning due to the diverse biological conditions and behavior patterns of humans. To address this problem, we propose a generic distributionally robust model for semi-supervised learning on distributionally shifted data. Considering both the discrepancy and the consistency between the labeled data and the unlabeled data, we learn the latent features that reduce person-specific discrepancy and preserve task-specific consistency. We evaluate our model in a variety of people-centric recognition tasks on real-world datasets, including intention recognition, activity recognition, muscular movement recognition and gesture recognition. The experiment results demonstrate that the proposed model outperforms the state-of-the-art methods.
History
Related Materials
1.
ISBN - Is published in 9781577358091 (urn:isbn:9781577358091)