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A convolutional neural network approach for face verification

机译:面部验证的卷积神经网络方法

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In this paper, we present a convolutional neural network (CNN) approach for the face verification task. We propose a “Siamese” architecture of two CNNs, with each CNN reduced to only four layers by fusing convolutional and subsampling layers. Network training is performed using the stochastic gradient descent algorithm with annealed global learning rate. Generalization ability of network is investigated via unique pairing of face images, and testing is done on AT&T face database. Experimental work shows that the proposed CNN system can classify a pair of 46×46 pixel face images in 0.6 milliseconds, which is significantly faster compared to equivalent network architecture with cascade of convolutional and subsampling layers. The verification accuracy achieved is 3.33% EER (equal error rate). Learning converges within 20 epochs, and the proposed technique can verify a test subject unseen in training. This work shows the viability of the “Siamese” CNN for face verification applications, and further improvements to the architecture are under construction to enhance its performance.
机译:在本文中,我们为面部验证任务提供了一种卷积神经网络(CNN)方法。我们提出了两个CNN的“暹罗”架构,每个CNN通过融合卷积和限制层仅减少到四层。使用随机梯度下降算法进行网络训练,退火全球学习率。通过独特的面部图像调查网络的泛化能力,并在AT&T面部数据库上进行测试。实验工作表明,所提出的CNN系统可以将一对46×46像素面部图像分类为0.6毫秒,与具有级联和附带层的级联的等效网络架构相比,这明显更快。所实现的验证精度是3.33%的eer(相等的错误率)。学习在20个时期内收敛,所提出的技术可以验证在训练中看不见的测试主体。这项工作显示了“暹罗”CNN用于面部验证应用的可行性,并进一步改进架构正在建设中以提高其性能。

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