Comparative analysis of classifiers for face recognition on image fragments identified by the FaceNet neural network

M. Polyakova, Dmitry Yu. Kozak, Natalia A. Huliaieva
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Abstract

As a result of the analysis of the literature, the based methods of face recognition on fragments of color images were identified. These are flexible comparison in graphs, hidden Markov models, principal component analysis, and neural network methods. The analyzed methods of face recognition are mainly characterized by significant computational costs and low recognition performance. An exception is the neural network methods of face recognition, which, after completing the training, make it possible to obtain a high recognition performance at low computational costs. However, when changing the prototype images of faces, it often becomes necessary to redefine the network architecture and retrain the network. The specificity of neural network methods is also the complexity of selecting the network architecture and its training. Such papers are devoted to the use of neural networks only for extraction of feature vectors of face images. The classification of the obtained feature vectors is then performed by known methods, namely, thresholding, a linear support vector machine, nearest neighbors, random forest. It has been observed that the lighting conditions in which the images were obtained and the turning of the head affect the shape of the separating surface and can decrease the feature vector classification performance for face images. Therefore, to improve the classification performance, it was decided to use correlation for prototype matching, a non-linear support vector machine and logistic regression. The performed experiment showed that correlation for prototype matching of low-light face images is characterized by higher classification performance compared to the thresholding. Moreover, the use of the Pearson and Spearman correlation coefficients showed similar results, and when using the Kendall correlation coefficient, the worst classification performance was obtained compared to the Pearson and Spearman coefficients. The research of the classification performance of images of faces that differ in head turn using correlation for prototype matching, a non-linear support vector machine and logistic regression showed the following. Correlation for prototype matching is more appropriate to use with small amounts of data due to the high classification performance and low computational complexity, since a small amount of data does not require a significant number of comparisons. However, on large amounts of data, the non-linear support vector machine requires less computation and shows similar classification performance. Using the results of the experiment, the researcher can select classification methods for a specific set of face images, preliminarily representing them with feature vectors using the network FaceNet.
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基于FaceNet神经网络的图像片段人脸识别分类器的比较分析
通过对相关文献的分析,确定了基于彩色图像片段的人脸识别方法。这些是灵活的比较图,隐马尔可夫模型,主成分分析和神经网络方法。所分析的人脸识别方法的主要特点是计算量大,识别性能低。人脸识别的神经网络方法是一个例外,它在完成训练后,可以以较低的计算成本获得较高的识别性能。然而,当改变人脸的原型图像时,往往需要重新定义网络结构并重新训练网络。神经网络方法的特殊性还在于网络结构的选择和训练的复杂性。这类论文致力于使用神经网络来提取人脸图像的特征向量。然后用已知的方法对得到的特征向量进行分类,即阈值分割、线性支持向量机、最近邻、随机森林。研究发现,获取图像时的光照条件和头部转动会影响分离表面的形状,降低人脸图像的特征向量分类性能。因此,为了提高分类性能,决定使用相关性进行原型匹配、非线性支持向量机和逻辑回归。实验表明,与阈值法相比,基于相关性的弱光人脸图像原型匹配具有更高的分类性能。此外,Pearson和Spearman相关系数的使用也显示了类似的结果,当使用Kendall相关系数时,与Pearson和Spearman系数相比,分类性能最差。使用相关性原型匹配、非线性支持向量机和逻辑回归对不同头部转动的人脸图像进行分类性能的研究结果如下:由于少量数据不需要大量的比较,因此,由于分类性能高,计算复杂度低,因此原型匹配的相关性更适合用于少量数据。然而,在数据量较大的情况下,非线性支持向量机所需的计算量更少,并且具有相似的分类性能。利用实验结果,研究人员可以对一组特定的人脸图像选择分类方法,并利用网络FaceNet初步用特征向量表示这些图像。
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