基于HMM的后处理模型在视频人脸识别中的应用

K. Qiu, Guoqiang Xiao, Yi Dai
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引用次数: 0

摘要

本文针对人脸识别中鲜为人知的数据源问题,提出了一种新的基于后处理hmm的解决方案。首先利用Lambertian反射模型和三维人脸模型系统地评价了特征人脸对姿态和光照变化的敏感性,并对数据源问题进行了实证研究,发现姿态和光照的变化会使特征人脸系统突然退化。为了突出该问题的重要性,将其明确定义为数据源的诅咒。针对这一问题,将识别率与数据源分析相结合,提出了两种方法来评估特定人脸识别方法的整体性能,同时考虑其对低质量数据源的鲁棒性。最后,提出了一种提高无约束环境下识别器鲁棒性的后处理方法。实验结果表明,所提出的后处理方案在解决数据源诅咒问题上是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of a post-processing model based on HMM for face recognition in video
In this thesis, the rarely concerned problem of data source in face recognition is investigated, and a novel post processing HMM-based solution is proposed. Data source problem is first empirically investigated through evaluating systematically the Eigenfaces sensitivity to variations of pose and illumination by Lambertian reflection model and 3D face model, which reveals that the changes of pose and illumination abruptly degrade the Eigenfaces system. This problem is explicitly defined as curse of data source for highlighting its significance. Aiming at solving this problem, combining the recognition rate with the analysis of the data sources, two methods is proposed to evaluate the overall performance of specific face recognition approach with its robustness against the low-quality data sources considered. Finally, a post-processing method is proposed to improve the robustness of the recognizer under unconstrained environment. Experimental results have impressively indicated the effectiveness of the proposed post-processing solution to tackle the curse of data source problem.
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