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Rethinking the Learning Paradigm for Dynamic Facial Expression Recognition

Hanyang Wang, Bo Li, Shuang Wu, Siyuan Shen, Feng Liu, Shouhong Ding, Aimin Zhou

202388 citationsDOI

Abstract

Dynamic Facial Expression Recognition (DFER) is a rapidly developing field that focuses on recognizing facial expressions in video format. Previous research has considered non-target frames as noisy frames, but we propose that it should be treated as a weakly supervised problem. We also identify the imbalance of short- and long-term temporal relationships in DFER. Therefore, we introduce the Multi-3D Dynamic Facial Expression Learning (M3DFEL) framework, which utilizes Multi-Instance Learning (MIL) to handle inexact labels. M3DFEL generates 3D-instances to model the strong short-term temporal relationship and utilizes 3DCNNs for feature extraction. The Dynamic Long-term Instance Aggregation Module (DLIAM) is then utilized to learn the long-term temporal relationships and dynamically aggregate the instances. Our experiments on DFEW and FERV39K datasets show that M3DFEL outperforms existing state-of-the-art approaches with a vanilla R3D18 backbone. The source code is available at https://github.com/faceeyes/M3DFEL.

Topics & Concepts

Computer scienceFacial expressionCode (set theory)Artificial intelligenceField (mathematics)Term (time)Feature (linguistics)Feature extractionExpression (computer science)Aggregate (composite)Source codePattern recognition (psychology)Active appearance modelFacial expression recognitionMachine learningFacial recognition systemImage (mathematics)Operating systemMathematicsPhysicsComposite materialMaterials sciencePure mathematicsPhilosophyQuantum mechanicsSet (abstract data type)LinguisticsProgramming languageHuman Pose and Action RecognitionEmotion and Mood RecognitionMultimodal Machine Learning Applications
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