One sample per person facial recognition with local binary patterns and image sub-grids

Gordon Stein, Yuan Li, Yin Wang
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引用次数: 4

Abstract

Local binary patterns (LBPs) are very commonly used to determine if a face in an image is a known person. However, accuracy is generally proportional to the number of training samples collected. The “single sample per person” (SSPP) problem focuses on identifying a person using only one training sample. Facial recognition from a single sample reduces the labor required to gather training data and enables some applications where only a single sample will be available. In this paper, we propose a method of improving the accuracy or efficiency of LBP-based face recognition by using a tree-based data structure to create “sub-grids” allowing for novel division patterns to be used in facial recognition, as opposed to the uniform grids used for most LBP face recognition. This method is then applied to the one sample per person problem where some patterns were found to require fewer regions within the image for comparable results to uniform grids.
每个人一个样本的人脸识别与局部二值模式和图像子网格
局部二值模式(lbp)通常用于确定图像中的人脸是否是已知的人。然而,准确率通常与收集的训练样本数量成正比。“每个人的单样本”(SSPP)问题侧重于仅使用一个训练样本来识别一个人。单个样本的面部识别减少了收集训练数据所需的劳动力,并使一些只有单个样本可用的应用成为可能。在本文中,我们提出了一种方法,通过使用基于树的数据结构来创建“子网格”,从而提高基于LBP的人脸识别的准确性或效率,从而允许在人脸识别中使用新的划分模式,而不是用于大多数LBP人脸识别的统一网格。然后将该方法应用于每个人一个样本的问题,其中发现一些模式需要较少的图像区域才能获得与均匀网格比较的结果。
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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