基于gradCAM的人脸识别网络

Chan Hyung Baek, J. Kwon, H. Jung
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摘要

在本文中,我们提出了一种人脸识别网络,它试图在使用较少数量的训练集的同时使用更多的面部特征。当将神经网络结合在一起进行人脸识别时,我们希望使用使用面部特征不同部分的网络。然而,网络训练随机选择这些面部特征的获取位置。另一方面,通过gradCAM将网络模型的判断依据表示为显著性图。因此,在本文中,我们使用gradCAM来可视化训练后的人脸识别模型在哪里进行了观察和识别判断。因此,可以根据所使用的不同面部特征构建网络组合。利用这种方法,我们训练了一个用于小人脸识别问题的网络。在一个简单的玩具人脸识别实例中,本文使用的识别网络与传统方法相比,准确率提高了1.79%,等效错误率(EER)降低了0.01788。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Recognition Network using gradCAM
In this paper, we proposed a face recognition network which attempts to use more facial features awhile using smaller number of training sets. When combining the neural network together for face recognition, we want to use networks that use different part of the facial features. However, the network training chooses randomly where these facial features are obtained. Other hand, the judgment basis of the network model can be expressed as a saliency map through gradCAM. Therefore, in this paper, we use gradCAM to visualize where the trained face recognition model has made a observations and recognition judgments. Thus, the network combination can be constructed based on the different facial features used. Using this approach, we trained a network for small face recognition problem. In an simple toy face recognition example, the recognition network used in this paper improves the accuracy by 1.79% and reduces the equal error rate (EER) by 0.01788 compared to the conventional approach.
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