Multi-channel Capsule Network for Micro-expression Recognition with Multiscale Fusion

Zhihua Xie,Jiawei Fan, Shijia Cheng

Multimedia Tools and Applications(2024)

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摘要
Facial micro-expression (ME), consisting of uncontrollable muscle movements in faces, is an important clue for revealing real people’s feelings. Due to the short duration and low intensity, the salient feature representation learning is the main challenge for robust facial ME recognition. To acquire the diverse and spatial relation representation, this paper proposes a simple and yet distinctive micro-expression recognition model based on multiscale convolutional fusion and multi-channel capsule network (MCFMCN). Firstly, the apex frame in a ME clip, located by computing the pixel difference between frames, is filtered by the optical flow transformation. Secondly, a multiscale fusion module is introduced to capture diverse ME related details. Then, to further explore the subtle spatial relations between parts in the ME faces, the multi-channel capsule network is designed to improve the feature representation performance of the traditional single channel capsule network. Finally, the entire ME recognition model is trained and verified on three benchmarks (CASMEII, SAMM, and SMIC) using the associated standard evaluation protocols: unweighted average recall rate (UAR) and unweighted F1 score (UF1). ME recognition experiments indicate that our method based on MCFMCN can improve the UAR (from 75.79
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关键词
Multiscale fusion,Micro-expression recognition,Multi-channel capsule network,Convolutional neural network,Optical flow
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