Micro-expression recognition model based on tv-l1 optical flow method and improved shufflenet

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    The same a­ uthors30, first used a medium-sized end-to-end neural_network model, namely a dual time-scale convolutional neural_network (DTSCNN), to recognize micro-expressions. Since the sample size of micro-expression datasets is still small, they cannot be adequately trained using deep convolutional neural_networks, and the training cost is high, making it difficult for ordinary | Vol:(1234567890) 12:17522 | Micro‑expression recognition model design Following is a description of the proposed model. The microexpression dataset did not contain sufficient data, and the number of expressions in different categories was extremely unbalanced after . . .

     

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