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Deep representation for partially occluded face verification

机译:部分封闭面部核查的深度代表

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Abstract By using deep learning-based strategy, the performance of face recognition tasks has been significantly enhanced. However, the verification and discrimination of the faces with occlusions still remain a challenge to most of the state-of-the-art approaches. Bearing this in mind, we propose a novel convolutional neural network which was designed specifically for the verification between the occluded and non-occluded faces for the same identity. It could learn both the shared and unique features based on a multiple network convolutional neural network architecture. The newly presented joint loss function and the corresponding alternating minimization approach were integrated to implement the training and testing of the presented convolutional neural network. Experimental results on the publicly available datasets (LFW 99.73%, YTF 97.30%, CACD 99.12%) show that the proposed deep representation approach outperforms the state-of-the-art face verification techniques.
机译:摘要通过使用基于深度学习的策略,人脸识别任务的性能得到了显着提高。但是,闭孔的面孔的核查和歧视仍然是对大多数最先进的方法的挑战。考虑到这一点,我们提出了一种新颖的卷积神经网络,该网络设计专门用于封闭和非封闭面之间的验证,以获得相同的身份。它可以基于多个网络卷积神经网络架构学习共享和独特功能。新出现的联合损失函数和相应的交替最小化方法被整合,以实现所呈现的卷积神经网络的培训和测试。实验结果对公共数据集(LFW 99.73%,YTF 97.30%,CACD 99.12%)表明,建议的深度表示方法优于最先进的面部验证技术。

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