首页> 外文期刊>Computational statistics & data analysis >Introduction to face recognition and evaluation of algorithm performance
【24h】

Introduction to face recognition and evaluation of algorithm performance

机译:人脸识别和算法性能评估简介

获取原文
获取原文并翻译 | 示例
           

摘要

The field of biometric face recognition blends methods from computer science, engineering and statistics, however statistical reasoning has been applied predominantly in the design of recognition algorithms. A new opportunity for the application of statistical methods is driven by growing interest in biometric performance evaluation. Methods for performance evaluation seek to identify, compare and interpret how characteristics of subjects, the environment and images are associated with the performance of recognition algorithms. Some central topics in face recognition are reviewed for background and several examples of recognition algorithms are given. One approach to the evaluation problem is then illustrated with a generalized linear mixed model analysis of the Good, Bad, and Ugly Face Challenge, a pre-eminent face recognition dataset used to test state-of-the-art still-image face recognition algorithms. Findings include that (i) between-subject variation is the dominant source of verification heterogeneity when algorithm performance is good, and (ii) many covariate effects on verification performance are 'universal' across easy, medium and hard verification tasks. Although the design and evaluation of face recognition algorithms draw upon some familiar statistical ideas in multivariate statistics, dimension reduction, classification, clustering, binary response data, generalized linear models and random effects, the field also presents some unique features and challenges. Opportunities abound for innovative statistical work in this new field.
机译:生物特征人脸识别领域融合了计算机科学,工程学和统计学中的方法,但是统计推理已主要应用于识别算法的设计中。对生物统计性能评估的兴趣日益增长,为应用统计方法提供了新机会。绩效评估方法旨在识别,比较和解释对象,环境和图像的特征如何与识别算法的绩效相关联。综述了面部识别中的一些主要主题,以了解背景知识,并给出了一些识别算法示例。然后通过对Good,Bad和Ugly Face Challenge的广义线性混合模型分析来说明评估问题的一种方法,该模型是用于测试最新的静止图像人脸识别算法的卓越人脸识别数据集。研究结果包括:(i)算法性能良好时,主体间变异是验证异质性的主要来源;(ii)在简单,中型和硬性验证任务中,对验证性能的许多协变量影响都是“普遍的”。尽管人脸识别算法的设计和评估借鉴了多元统计,降维,分类,聚类,二进制响应数据,广义线性模型和随机效应中的一些熟悉的统计思想,但该领域还提出了一些独特的功能和挑战。在这一新领域中进行创新统计工作的机会比比皆是。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号