Lifting Scheme-Based Implicit Disentanglement of Emotion-Related Facial Dynamics in the Wild
Xingjian Wang, Li Chai

TL;DR
This paper introduces a novel implicit disentanglement framework for in-the-wild facial expression recognition, leveraging an expanded wavelet lifting scheme to separate emotion-related dynamics from irrelevant context without external guidance.
Contribution
The proposed IFDD method innovatively employs a fully learnable wavelet lifting scheme for implicit disentanglement of facial dynamics, improving recognition accuracy in challenging real-world scenarios.
Findings
Outperforms prior supervised DFER methods in accuracy
Achieves comparable efficiency to existing approaches
Demonstrates robustness on in-the-wild datasets
Abstract
In-the-wild dynamic facial expression recognition (DFER) encounters a significant challenge in recognizing emotion-related expressions, which are often temporally and spatially diluted by emotion-irrelevant expressions and global context. Most prior DFER methods directly utilize coupled spatiotemporal representations that may incorporate weakly relevant features with emotion-irrelevant context bias. Several DFER methods highlight dynamic information for DFER, but following explicit guidance that may be vulnerable to irrelevant motion. In this paper, we propose a novel Implicit Facial Dynamics Disentanglement framework (IFDD). Through expanding wavelet lifting scheme to fully learnable framework, IFDD disentangles emotion-related dynamic information from emotion-irrelevant global context in an implicit manner, i.e., without exploit operations and external guidance. The disentanglement…
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Code & Models
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Taxonomy
TopicsFace recognition and analysis · Facial Nerve Paralysis Treatment and Research
