Modest face recognition

V. Štruc, J. Krizaj, S. Dobrišek
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引用次数: 8

Abstract

The facial imagery usually at the disposal for forensics investigations is commonly of a poor quality due to the unconstrained settings in which it was acquired. The captured faces are typically non-frontal, partially occluded and of a low resolution, which makes the recognition task extremely difficult. In this paper we try to address this problem by presenting a novel framework for face recognition that combines diverse features sets (Gabor features, local binary patterns, local phase quantization features and pixel intensities), probabilistic linear discriminant analysis (PLDA) and data fusion based on linear logistic regression. With the proposed framework a matching score for the given pair of probe and target images is produced by applying PLDA on each of the four feature sets independently - producing a (partial) matching score for each of the PLDA-based feature vectors - and then combining the partial matching results at the score level to generate a single matching score for recognition. We make two main contributions in the paper: i) we introduce a novel framework for face recognition that relies on probabilistic MOdels of Diverse fEature SeTs (MODEST) to facilitate the recognition process and ii) benchmark it against the existing state-of-the-art. We demonstrate the feasibility of our MODEST framework on the FRGCv2 and PaSC databases and present comparative results with the state-of-the-art recognition techniques, which demonstrate the efficacy of our framework.
适度的面部识别
通常用于法医调查的面部图像通常质量较差,因为它是在不受约束的环境中获得的。被捕获的人脸通常是非正面的、部分遮挡的、低分辨率的,这使得识别任务非常困难。在本文中,我们试图通过提出一个新的人脸识别框架来解决这个问题,该框架结合了不同的特征集(Gabor特征、局部二值模式、局部相位量化特征和像素强度)、概率线性判别分析(PLDA)和基于线性逻辑回归的数据融合。利用所提出的框架,通过对四个特征集中的每一个独立应用PLDA来产生给定的一对探针和目标图像的匹配分数-为每个基于PLDA的特征向量产生(部分)匹配分数-然后在分数水平上将部分匹配结果结合起来以生成单个匹配分数用于识别。我们在本文中做出了两个主要贡献:i)我们引入了一个新的人脸识别框架,该框架依赖于不同特征集的概率模型(MODEST)来促进识别过程;ii)将其与现有的最先进技术进行基准测试。我们在FRGCv2和PaSC数据库上展示了我们的MODEST框架的可行性,并提供了与最先进的识别技术的比较结果,这证明了我们框架的有效性。
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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