Abstract
Emotional detection based on facial micro-expressions is essential in high-risk tasks such as criminal investigation or lie detection. However, micro-expressions often occur in high-risk tasks when people often use facial expressions to conceal their actual emotional states. Therefore, spotting macro- and micro-expression intervals in long video sequences has become hot research. Considering the difference in duration and facial muscle movement intensity between macro- and micro-expression, we propose a novel Spatio-temporal Convolutional Emotional Attention Network (STCEAN) for spotting macro- and micro-expression intervals in long video sequences. The spatial features of each frame in the video sequence are extracted through the convolution neural network. Then the emotional self-attention model is used to analyze the temporal weights of spatial features in different emotional dimensions. The emotional weights in the temporal dimension are filtered for spotting macro- and micro-expressions intervals. Finally, the STCEAN model is jointly optimized by the dual emotional focal loss of macro- and micro-expression to solve the problem of sample unbalance. The experimental results on the CAS(ME)2 and SAMM-LV datasets show that the STCEAN model achieves competitive results in the Facial Micro-Expression Challenge 2021.
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