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Enhancing convolutional neural networks for face recognition with occlusion maps and batch triplet loss

机译:利用遮挡图和批处理三元组损失增强卷积神经网络以进行人脸识别

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Despite the recent success of convolutional neural networks for computer vision applications, unconstrained face recognition remains a challenge. In this work, we make two contributions to the field. Firstly, we consider the problem of face recognition with partial occlusions and show how current approaches might suffer significant performance degradation when dealing with this kind of face images. We propose a simple method to find out which parts of the human face are more important to achieve a high recognition rate, and use that information during training to force a convolutional neural network to learn discriminative features from all the face regions more equally, including those that typical approaches tend to pay less attention to. We test the accuracy of the proposed method when dealing with real-life occlusions using the AR face database. Secondly, we propose a novel loss function called batch triplet loss that improves the performance of the triplet loss by adding an extra term to the loss function to cause minimisation of the standard deviation of both positive and negative scores. We show consistent improvement in the Labeled Faces in the Wild (LFW) benchmark by applying both proposed adjustments to the convolutional neural network training. (C) 2018 Elsevier B.V. All rights reserved.
机译:尽管卷积神经网络最近在计算机视觉应用中取得了成功,但无约束的人脸识别仍然是一个挑战。在这项工作中,我们为该领域做出了两点贡献。首先,我们考虑了部分遮挡的人脸识别问题,并说明了当前的方法在处理这类人脸图像时可能会遭受严重的性能下降。我们提出一种简单的方法来找出人脸的哪些部分对于实现较高的识别率更重要,并在训练过程中使用该信息迫使卷积神经网络更平等地学习所有脸部区域(包括那些)的识别特征典型的方法往往较少关注。当使用AR人脸数据库处理现实遮挡时,我们测试了该方法的准确性。其次,我们提出了一种称为批处理三重态损失的新颖损失函数,该函数通过在损失函数中增加一个额外项以使正负分数的标准偏差最小化来改善三重态损失的性能。通过将两种建议的调整应用于卷积神经网络训练,我们在野外标记面孔(LFW)基准中显示出持续改进。 (C)2018 Elsevier B.V.保留所有权利。

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