基于参数Sigmoid范数的CNN人脸识别

Yash Srivastava, Vaishnav Murali, S. Dubey
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引用次数: 6

摘要

卷积神经网络(CNN)由于其在各种计算机视觉应用中的出色表现,近年来变得非常流行。它也被广泛应用于人脸识别问题。然而,现有的CNN层无法应对难样例的问题,难样例通常会产生较低的分类分数。因此,现有的方法变得偏向于简单的例子。在本文中,我们通过在最后的全连接层之前加入参数Sigmoid范数(PSN)层来解决这个问题。我们利用PSN层提出了一个PSNet CNN模型。与简单的示例相比,PSN层有利于较难示例的高梯度流。因此,它迫使网络学习困难示例的视觉特征。我们通过人脸识别实验来测试PSN层的性能。实验了不同损失函数下PSN层的适用性。实验中使用了广泛使用的YouTube Faces (YTF)和Labeled Faces in The Wild (LFW)数据集。实验结果证实了所提出的PSN算法的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PSNet: Parametric Sigmoid Norm Based CNN for Face Recognition
The Convolutional Neural Networks (CNN) have become very popular recently due to its outstanding performance in various computer vision applications. It is also used over widely studied face recognition problem. However, the existing layers of CNN are unable to cope with the problem of hard examples which generally produce lower class scores. Thus, the existing methods become biased towards the easy examples. In this paper, we resolve this problem by incorporating a Parametric Sigmoid Norm (PSN) layer just before the final fully-connected layer. We propose a PSNet CNN model by using the PSN layer. The PSN layer facilitates high gradient flow for harder examples as compared to easy examples. Thus, it forces the network to learn the visual features of difficult examples. We conduct the face recognition experiments to test the performance of PSN layer. The suitability of the PSN layer with different loss functions is also experimented. The widely used YouTube Faces (YTF) and Labeled Faces in the Wild (LFW) datasets are used in the experiments. The experimental results confirm the relevance of the proposed PSN laver.
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