Bayesian face recognition with deformable image models

B. Moghaddam, C. Nastar, A. Pentland
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引用次数: 2

Abstract

We propose a novel representation for characterizing image differences using a deformable technique for obtaining pixel-wise correspondences. This representation, which is based on a deformable 3D mesh in XYI-space, is then experimentally compared with two related correspondence methods: optical flow and intensity differences. Furthermore, we make use of a probabilistic similarity measure for direct image matching based on a Bayesian analysis of image variations. We model two classes of variation in facial appearance: intra-personal and extra-personal. The probability density function for each class is estimated from training data and used to compute a similarity measure based on the a posteriori probabilities. The performance advantage of our deformable probabilistic matching technique is demonstrated using 1700 faces from the USA Army's "FERET" face database.
具有变形图像模型的贝叶斯人脸识别
我们提出了一种新的表示,用于使用可变形技术来获得像素级对应来表征图像差异。该表示基于xyi空间中的可变形3D网格,然后与两种相关的对应方法:光流和强度差进行了实验比较。此外,我们利用基于贝叶斯图像变化分析的概率相似性度量来进行直接图像匹配。我们对面部外观的两类变异进行了建模:个人内变异和个人外变异。从训练数据中估计每个类的概率密度函数,并用于计算基于后验概率的相似性度量。使用来自美国陆军“FERET”人脸数据库的1700张人脸,证明了我们的可变形概率匹配技术的性能优势。
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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