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Multi-Block Color-Binarized Statistical Images for Single-Sample Face Recognition

机译:用于单样本面部识别的多块颜色二值化统计图像

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摘要

Single-Sample Face Recognition (SSFR) is a computer vision challenge. In this scenario, there is only one example from each individual on which to train the system, making it difficult to identify persons in unconstrained environments, mainly when dealing with changes in facial expression, posture, lighting, and occlusion. This paper discusses the relevance of an original method for SSFR, called Multi-Block Color-Binarized Statistical Image Features (MB-C-BSIF), which exploits several kinds of features, namely, local, regional, global, and textured-color characteristics. First, the MB-C-BSIF method decomposes a facial image into three channels (e.g., red, green, and blue), then it divides each channel into equal non-overlapping blocks to select the local facial characteristics that are consequently employed in the classification phase. Finally, the identity is determined by calculating the similarities among the characteristic vectors adopting a distance measurement of the K-nearest neighbors (K-NN) classifier. Extensive experiments on several subsets of the unconstrained Alex and Robert (AR) and Labeled Faces in the Wild (LFW) databases show that the MB-C-BSIF achieves superior and competitive results in unconstrained situations when compared to current state-of-the-art methods, especially when dealing with changes in facial expression, lighting, and occlusion. The average classification accuracies are 96.17% and 99% for the AR database with two specific protocols (i.e., Protocols I and II, respectively), and 38.01% for the challenging LFW database. These performances are clearly superior to those obtained by state-of-the-art methods. Furthermore, the proposed method uses algorithms based only on simple and elementary image processing operations that do not imply higher computational costs as in holistic, sparse or deep learning methods, making it ideal for real-time identification.
机译:单样本面部识别(SSFR)是一种计算机视觉挑战。在这种情况下,只有一个示例来自每个人来训练系统,使得难以识别不受约束环境中的人,主要是在处理面部表情,姿势,照明和闭塞的变化时。本文讨论了SSFR的原始方法的相关性,称为多块颜色二值化统计图像特征(MB-C-BSIF),它利用了几种特征,即本地,区域,全局和纹理颜色特征。首先,MB-C-BSIF方法将面部图像分解成三个通道(例如,红色,绿色和蓝色),然后它将每个信道划分为相等的非重叠块以选择所用的本地面部特征分类阶段。最后,通过计算采用K-CORMATIONBORS(K-NN)分类器的距离测量的特征向量之间的相似性来确定身份。在野外(LFW)数据库中的几个亚射箭(AR)的几个子集上的大量实验,并在野外(LFW)数据库中标记的面孔表明,与当前的状态相比,MB-C-BSIF在无约会情况下实现了优异的和竞争力的结果艺术方法,特别是在处理面部表情,照明和闭塞的变化时。 AR数据库的平均分类精度为96.17%和99%,具有两个特定协议(即,协议I和II,II,分别),挑战LFW数据库的38.01%。这些性能显然优于通过最先进的方法获得的表演。此外,所提出的方法仅使用算法仅基于简单和基本的图像处理操作,这些操作并不暗示在整体,稀疏或深度学习方法中的计算成本更高,使其成为实时识别的理想选择。

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