Deep hypersphere embedding for real-time face recognition

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Abstract

With the advancement of human-computer interaction capabilities of robots, computer vision surveillance systems involving security yields a large impact in the research industry by helping in digitalization of certain security processes. Recognizing a face in the computer vision involves identification and classification of which faces belongs to the same person by means of comparing face embedding vectors. In an organization that has a large and diverse labelled dataset on a large number of epoch, oftentimes, creates a training difficulties involving incompatibility in different versions of face embedding that leads to poor face recognition accuracy. In this paper, we will design and implement robotic vision security surveillance system incorporating hybrid combination of MTCNN for face detection, and FaceNet as the unified embedding for face recognition and clustering.

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Alimuin, R., Dadios, E., Dayao, J., & Arenas, S. (2020). Deep hypersphere embedding for real-time face recognition. Telkomnika (Telecommunication Computing Electronics and Control), 18(3), 1671–1677. https://doi.org/10.12928/TELKOMNIKA.v18i3.14787

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