Experiments on Deep Face Recognition Using Partial Faces

Ali Elmahmudi, H. Ugail
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引用次数: 20

Abstract

Face recognition is a very current subject of great interest in the area of visual computing. In the past, numerous face recognition and authentication approaches have been proposed, though the great majority of them use full frontal faces both for training machine learning algorithms and for measuring the recognition rates. In this paper, we discuss some novel experiments to test the performance of machine learning, especially the performance of deep learning, using partial faces as training and recognition cues. Thus, this study sharply differs from the common approaches of using the full face for recognition tasks. In particular, we study the rate of recognition subject to the various parts of the face such as the eyes, mouth, nose and the forehead. In this study, we use a convolutional neural network based architecture along with the pre-trained VGG-Face model to extract features for training. We then use two classifiers namely the cosine similarity and the linear support vector machine to test the recognition rates. We ran our experiments on the Brazilian FEI dataset consisting of 200 subjects. Our results show that the cheek of the face has the lowest recognition rate with 15% while the (top, bottom and right) half and the 3/4 of the face have near 100% recognition rates.
基于局部人脸的深度人脸识别实验
人脸识别是视觉计算领域中一个非常热门的课题。过去,已经提出了许多人脸识别和身份验证方法,尽管其中绝大多数使用全正面人脸来训练机器学习算法和测量识别率。在本文中,我们讨论了一些新的实验来测试机器学习的性能,特别是深度学习的性能,使用部分面孔作为训练和识别线索。因此,这项研究与使用全脸进行识别任务的常见方法截然不同。特别地,我们研究了面部不同部位(如眼睛、嘴巴、鼻子和前额)的识别率。在本研究中,我们使用基于卷积神经网络的架构以及预训练的VGG-Face模型来提取用于训练的特征。然后我们使用余弦相似度和线性支持向量机两个分类器来测试识别率。我们在巴西FEI数据集上进行了实验,该数据集由200个受试者组成。我们的研究结果表明,面部的脸颊识别率最低,只有15%,而(上、下、右)一半和3/4的面部识别率接近100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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