Prior Information based Decomposition and Reconstruction Learning for Micro-Expression Recognition
Jinsheng Wei, Haoyu Chen, Guanming Lu, Jingjie Yan, Yue Xie and, Guoying Zhao

TL;DR
This paper introduces a novel graph-based model for micro-expression recognition that leverages prior information about facial component actions to improve interpretability and performance.
Contribution
It proposes the DeRe-GRL model with ADM and RRM modules, explicitly modeling facial component actions and their relationships for better ME feature learning.
Findings
Achieves competitive performance on MER benchmarks.
Effectively learns action features of facial components.
Demonstrates the interpretability of the proposed model.
Abstract
Micro-expression recognition (MER) draws intensive research interest as micro-expressions (MEs) can infer genuine emotions. Prior information can guide the model to learn discriminative ME features effectively. However, most works focus on researching the general models with a stronger representation ability to adaptively aggregate ME movement information in a holistic way, which may ignore the prior information and properties of MEs. To solve this issue, driven by the prior information that the category of ME can be inferred by the relationship between the actions of facial different components, this work designs a novel model that can conform to this prior information and learn ME movement features in an interpretable way. Specifically, this paper proposes a Decomposition and Reconstruction-based Graph Representation Learning (DeRe-GRL) model to effectively learn high-level ME…
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Taxonomy
TopicsAdvanced Computing and Algorithms · Sentiment Analysis and Opinion Mining · Emotion and Mood Recognition
