人脸识别系统的性能建模与预测

Peng Wang, Q. Ji
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引用次数: 10

摘要

准确地对人脸识别系统的性能进行建模,并预测其在各种环境下的个体识别结果,是一项具有挑战性的任务。本文提出了基于相似性度量分析的人脸识别性能建模和预测的通用方法。我们首先引入“完美识别”的概念,它只依赖于识别系统的内在结构。从完美识别相似度分数(PRSS)中提取的度量可以在没有经验测试的情况下对人脸识别性能进行建模。本文还提出了一种预测查询集识别率的EM算法。此外,从相似度分数中提取特征来预测单个查询的识别结果。该方法可以离线选择算法参数,在线预测识别性能,在线调整人脸对齐以获得更好的识别效果。实验结果表明,采用该方法可以大大提高识别系统的性能。
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Performance Modeling and Prediction of Face Recognition Systems
It is a challenging task to accurately model the performance of a face recognition system, and to predict its individual recognition results under various environments. This paper presents generic methods to model and predict the face recognition performance based on analysis of similarity measurement. We first introduce a concept of "perfect recognition", which only depends on the intrinsic structure of a recognition system. A metric extracted from perfect recognition similarity scores (PRSS) allows modeling the face recognition performance without empirical testing. This paper also presents an EM algorithm to predict the recognition rate of a query set. Furthermore, features are extracted from similarity scores to predict recognition results of individual queries. The presented methods can select algorithm parameters offline, predict recognition performance online, and adjust face alignment online for better recognition. Experimental results show that the performance of recognition systems can be greatly improved using presented methods.
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