Improved Xception with Local Dense Connections and Transition Layer for Facial Expression Recognition
Traditional deep convolutional neural networks are used for facial expression recognition, which makes the number of neurons and parameters huge, wastes computing resources, and even causes problems such as overfitting and network degradation. Meanwhile, single-scale expression features cannot descr...
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