Expression Analysis Based on Face Regions in Read-world Conditions
Zheng Lian, Ya Li, Jian-Hua Tao, Jian Huang, Ming-Yue Niu

TL;DR
This paper analyzes how different face regions contribute to emotion recognition accuracy in real-world conditions, using visualization and experimental analysis across multiple datasets.
Contribution
It introduces a face region division for emotion analysis and provides experimental insights into the contribution of each region in real-world scenarios.
Findings
Different face regions have varying importance for specific emotions.
Visualization methods reveal key face areas for emotion recognition.
Analysis supports better understanding of facial cues in natural conditions.
Abstract
Facial emotion recognition is an essential and important aspect of the field of human-machine interaction. Past research on facial emotion recognition focuses on the laboratory environment. However, it faces many challenges in real-world conditions, i.e., illumination changes, large pose variations and partial or full occlusions. Those challenges lead to different face areas with different degrees of sharpness and completeness. Inspired by this fact, we focus on the authenticity of predictions generated by different <emotion, region> pairs. For example, if only the mouth areas are available and the emotion classifier predicts happiness, then there is a question of how to judge the authenticity of predictions. This problem can be converted into the contribution of different face areas to different emotions. In this paper, we divide the whole face into six areas: nose areas, mouth areas,…
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