Robust Low-Rank Sparse Framework for Video-Based Affective Computing
Feng-Qi Cui, Jinyang Huang, Sirui Zhao, Xinyu Li, Xin Yan, Ziyu Jia, Xiaokang Zhou

TL;DR
This paper introduces a hierarchical low-rank sparse framework for video-based affective computing, effectively disentangling emotional components to improve robustness and dynamic emotion understanding.
Contribution
The proposed LSEF framework uniquely models affective dynamics as a hierarchical low-rank sparse process with three modules, enhancing stability and interpretability.
Findings
Significantly improves robustness in emotion recognition
Enhances dynamic discrimination of affective states
Validated across multiple datasets
Abstract
Video-based Affective Computing (VAC), vital for emotion analysis and human-computer interaction, suffers from model instability and representational degradation due to complex emotional dynamics. Since the meaning of different emotional fluctuations may differ under different emotional contexts, the core limitation is the lack of a hierarchical structural mechanism to disentangle distinct affective components, i.e., emotional bases (the long-term emotional tone), and transient fluctuations (the short-term emotional fluctuations). To address this, we propose the Low-Rank Sparse Emotion Understanding Framework (LSEF), a unified model grounded in the Low-Rank Sparse Principle, which theoretically reframes affective dynamics as a hierarchical low-rank sparse compositional process. LSEF employs three plug-and-play modules, i.e., the Stability Encoding Module (SEM) captures low-rank…
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Taxonomy
TopicsEmotion and Mood Recognition · EEG and Brain-Computer Interfaces · Sparse and Compressive Sensing Techniques
