Small sample face recognition method combining sparse representation and neural network
A neural network and joint sparse technology, applied in the field of face recognition, can solve the problems of few face samples, affect the recognition effect, and affect the recognition accuracy of the system, so as to reduce the intra-class distance, enhance the robustness, and expand the inter-class Gap effect
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[0088] The small-sample face recognition method of the joint sparse representation neural network of the present invention realizes the face recognition process based on the Resnet neural network framework. The experiment selects the Resnet-34 framework (which contains 33 convolutional layers and a full-face layer) as the original model, and uses the CASIA-WebFace face database to train it, which contains 500,000 faces of 10,575 people model, and includes pose and expression variations. In this experiment, 10575 categories of face pictures were selected, and only one frontal standard picture was used for each category. In addition, 3 pictures were selected for each category as a verification set. The test sets of this experiment are AR and YaleB face datasets.
[0089] Experiment: For the Resnet framework, use the original softmax loss function and the sparseloss loss function proposed by this method, such as Figure 5 As shown, observing the change trend of its average rate...
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