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Fine-Grained 3D Facial Reconstruction for Micro-Expressions

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Recent advances in 3D facial expression reconstruction have demonstrated remarkable performance in capturing macro-expressions, yet the reconstruction of micro-expressions remains unexplored. This novel task is particularly challenging due to the subtle, transient, and low-intensity nature of micro-expressions, which complicate the extraction of stable and discriminative features essential for accurate reconstruction. In this paper, we propose a fine-grained micro-expression reconstruction method that integrates a global dynamic feature capturing stable facial motion patterns with a locally-enriched feature incorporating multiple informative cues from 2D motions, facial priors and 3D facial geometry. Specifically, we devise a plug-and-play dynamic-encoded module to extract micro-expression feature for global facial action, allowing it to leverage prior knowledge from abundant macro-expression data to mitigate the scarcity of micro-expression data. Subsequently, a dynamic-guided mesh deformation module is designed for extracting aggregated local features from dense optical flow, sparse landmark cues and facial mesh geometry, which adaptively refines fine-grained facial micro-expression without compromising global 3D geometry. Extensive experiments on micro-expression datasets demonstrate that our method consistently outperforms state-of-the-art methods in both geometric accuracy and perceptual detail.

Che Sun, Xinjie Zhang, Rui Gao, Xu Chen, Yuwei Wu, Yunde Jia• 2026

Related benchmarks

TaskDatasetResultRank
Micro-expression recognitionCASME II
Weighted F1 Score (WF1)0.5332
13
3D Facial ReconstructionCASME II
L1 Loss0.041
5
3D Facial ReconstructionCASME
L1 Loss0.044
5
3D Facial ReconstructionSAMM
L1 Loss0.06
5
Micro-expression recognitionCASME
ACC44.7
5
Micro-expression recognitionSAMM
Accuracy (ACC)56.86
5
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