Method and a system for evaluating the quality of a face image based on a convolution neural network
A convolutional neural network and quality assessment technology, applied in image enhancement, image analysis, image data processing, etc., can solve problems such as large model impracticality, low accuracy of shallow neural network, inconsistent fusion normalization standards, etc. Achieve the effect of improving calculation speed, improving discrimination accuracy, and ensuring accuracy
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[0035] The implementation of the present invention will be described below through specific examples, and the network structure in the present invention will be described in the form of a flow diagram for convenience of description.
[0036] The present invention is mainly applied to the technical field of face recognition, especially to face image quality evaluation in face tracking images in real-time video, so as to improve the accuracy of face recognition. The core idea is to 1) improve the accuracy of face image quality evaluation 2) Guaranteed real-time performance; in the field of face recognition technology, especially in surveillance video application scenarios, due to the complex environment and the possibility of multiple face images in one frame, it is obviously impossible to perform face detection on each frame To meet real-time requirements, the application of face tracking technology in unrestricted scenarios such as monitoring will inevitably introduce large pos...
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