Evaluation of classroom teaching quality based on video processing technology

High quality teaching has always been the pursuit of universities, but the automatic and real time evaluation on the quality of classroom teaching has not been achieved. To solve this problem, a real-time processing of classroom video through face detection technology and a software system to provide a basis for judging the quality of teaching is proposed in this paper. The main application of machine learning and deep learning is to build the face detection algorithm, and the application of C# and Hikvision SDK are for the second development building software interface and nestification of software systems.

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