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Shallow Triple Stream Three-dimensional CNN (STSTNet) for Micro-expression Recognition

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In the recent year, state-of-the-art for facial micro-expression recognition have been significantly advanced by deep neural networks. The robustness of deep learning has yielded promising performance beyond that of traditional handcrafted approaches. Most works in literature emphasized on increasing the depth of networks and employing highly complex objective functions to learn more features. In this paper, we design a Shallow Triple Stream Three-dimensional CNN (STSTNet) that is computationally light whilst capable of extracting discriminative high level features and details of micro-expressions. The network learns from three optical flow features (i.e., optical strain, horizontal and vertical optical flow fields) computed based on the onset and apex frames of each video. Our experimental results demonstrate the effectiveness of the proposed STSTNet, which obtained an unweighted average recall rate of 0.7605 and unweighted F1-score of 0.7353 on the composite database consisting of 442 samples from the SMIC, CASME II and SAMM databases.

Sze-Teng Liong, Y.S. Gan, John See, Huai-Qian Khor, Yen-Chang Huang• 2019

Related benchmarks

TaskDatasetResultRank
Micro-expression recognitionCASME II
UF183.8
25
Micro-expression recognitionSMIC
UF10.68
20
Micro-expression recognitionSAMM
UF165.9
19
Micro-expression recognitionFull (LOSO)
UF173.53
13
Micro-expression recognitionSMIC (LOSO)
UF168.01
13
Micro-expression recognitionSAMM (LOSO)
UF165.88
13
Micro-expression recognitionCASME II (LOSO)
UF10.8382
13
Micro-expression recognitionMEGC Full 2019
UF10.735
12
Micro-expression recognitionCASME3 (test)
UF10.3795
10
Micro-expression recognitionCASME III Part A
UF137.95
5
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