HCAICVLGSep 23, 2019

Deep Multi-Facial patches Aggregation Network for Expression Classification from Face Images

arXiv:1909.10305v21 citations
Originality Synthesis-oriented
AI Analysis

This work addresses expression classification to improve HCI, but it is incremental as it builds on existing deep learning methods for FER.

The paper tackles face expression recognition for human-computer interaction by proposing a deep multi-facial patches aggregation network, achieving promising results on the CK+ dataset.

Emotional Intelligence in Human-Computer Interaction has attracted increasing attention from researchers in multidisciplinary research fields including psychology, computer vision, neuroscience, artificial intelligence, and related disciplines. Human prone to naturally interact with computers face-to-face. Human Expressions is an important key to better link human and computers. Thus, designing interfaces able to understand human expressions and emotions can improve Human-Computer Interaction (HCI) for better communication. In this paper, we investigate HCI via a deep multi-facial patches aggregation network for Face Expression Recognition (FER). Deep features are extracted from facial parts and aggregated for expression classification. Several problems may affect the performance of the proposed framework like the small size of FER datasets and the high number of parameters to learn. For That, two data augmentation techniques are proposed for facial expression generation to expand the labeled training. The proposed framework is evaluated on the extended Cohn-Konade dataset (CK+) and promising results are achieved.

Foundations

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