Smile on the Face, Sadness in the Eyes: Bridging the Emotion Gap with a Multimodal Dataset of Eye and Facial Behaviors
Kejun Liu, Yuanyuan Liu, Lin Wei, Chang Tang, Yibing Zhan, Zijing Chen, Zhe Chen

TL;DR
This paper introduces a new multimodal dataset capturing eye and facial behaviors during genuine emotions, and proposes a Transformer-based model that leverages eye behaviors to improve emotion recognition accuracy.
Contribution
The study presents a novel EMER dataset with genuine emotion annotations and a new EMERT model that effectively integrates eye behaviors to enhance emotion recognition.
Findings
EMERT outperforms state-of-the-art multimodal methods.
Eye behaviors significantly improve ER robustness.
The dataset enables comprehensive evaluation of multimodal ER methods.
Abstract
Emotion Recognition (ER) is the process of analyzing and identifying human emotions from sensing data. Currently, the field heavily relies on facial expression recognition (FER) because visual channel conveys rich emotional cues. However, facial expressions are often used as social tools rather than manifestations of genuine inner emotions. To understand and bridge this gap between FER and ER, we introduce eye behaviors as an important emotional cue and construct an Eye-behavior-aided Multimodal Emotion Recognition (EMER) dataset. To collect data with genuine emotions, spontaneous emotion induction paradigm is exploited with stimulus material, during which non-invasive eye behavior data, like eye movement sequences and eye fixation maps, is captured together with facial expression videos. To better illustrate the gap between ER and FER, multi-view emotion labels for mutimodal ER and FER…
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Taxonomy
TopicsEmotion and Mood Recognition · Gaze Tracking and Assistive Technology · Face Recognition and Perception
