VIPLFaceNet: an open source deep face recognition SDK

X Liu, M Kan, W Wu, S Shan, X Chen - Frontiers of Computer Science, 2017 - Springer
X Liu, M Kan, W Wu, S Shan, X Chen
Frontiers of Computer Science, 2017Springer
Robust face representation is imperative to highly accurate face recognition. In this work, we
propose an open source face recognition method with deep representation named as
VIPLFaceNet, which is a 10-layer deep convolutional neural network with seven
convolutional layers and three fully-connected layers. Compared with the well-known
AlexNet, our VIPLFaceNet takes only 20% training time and 60% testing time, but achieves
40% drop in error rate on the real-world face recognition benchmark LFW. Our VIPLFaceNet …
Abstract
Robust face representation is imperative to highly accurate face recognition. In this work, we propose an open source face recognition method with deep representation named as VIPLFaceNet, which is a 10-layer deep convolutional neural network with seven convolutional layers and three fully-connected layers. Compared with the well-known AlexNet, our VIPLFaceNet takes only 20% training time and 60% testing time, but achieves 40% drop in error rate on the real-world face recognition benchmark LFW. Our VIPLFaceNet achieves 98.60% mean accuracy on LFW using one single network. An open-source C++ SDK based on VIPLFaceNet is released under BSD license. The SDK takes about 150ms to process one face image in a single thread on an i7 desktop CPU. VIPLFaceNet provides a state-of-the-art start point for both academic and industrial face recognition applications.
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