FaceRecognition - This is an implematation project of face detection and recognition

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FaceRecognition is an implementation project of face detection and recognition. The face detection using MTCNN algorithm, and recognition using LightenedCNN algorithm. The release version is 0.1.3, is based on ROCK960 Platform, target OS is Ubuntu 16.04.

https://github.com/OAID/FaceRecognition

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