Multi-task Deep Neural Network for Joint Face Recognition and Facial Attribute Prediction

Zhanxiong Wang, Keke He, Yanwei Fu, Rui Feng, Yu-Gang Jiang, X. Xue
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引用次数: 49

Abstract

Deep neural networks have significantly improved the performance of face recognition and facial attribute prediction, which however are still very challenging on the million scale dataset, i.e. MegaFace. In this paper, we for the first time, advocate a multi-task deep neural network for jointly learning face recognition and facial attribute prediction tasks. Extensive experimental evaluation clearly demonstrates the effectiveness of our architecture. Remarkably, on the largest face recognition benchmark -- MegaFace dataset, our networks can achieve the Rank-1 identication accuracy of 77.74% and face verication accuracy 79.24% TAR at 10-6 FAR, which are the best performance on the small protocol among all the publicly released methods.
联合人脸识别与人脸属性预测的多任务深度神经网络
深度神经网络显著提高了人脸识别和人脸属性预测的性能,但在百万规模的数据集(即MegaFace)上仍然非常具有挑战性。在本文中,我们首次提出了一种多任务深度神经网络,用于联合学习人脸识别和人脸属性预测任务。大量的实验评估清楚地证明了我们的架构的有效性。值得注意的是,在最大的人脸识别基准——MegaFace数据集上,我们的网络在10-6 FAR下的Rank-1识别准确率达到77.74%,人脸验证准确率达到79.24%,是所有公开发布的方法中在小协议上的最佳性能。
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