Face Tracking Based on 3D Positional Hypothesis

Yuzuko Utsumi, Y. Iwai, M. Yachida
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Abstract

Probabilistic and statistical model analysis methods based on the Bayesian approach have recently been applied to face tracking. Here, we propose a face tracking method based on a Bayesian framework of image sequences. We assume that an observed space is three-dimensional (3D) and model facial shape, rotation and translation in 3D. A 3D positional hypothesis is generated using the facial translation model. The likelihood of facial existence is calculated from the output of the classifier learned using the AdaBoost M1algorithm. The results of an experiment show the efficiency of the proposed method for face tracking.
基于三维位置假设的人脸跟踪
基于贝叶斯方法的概率和统计模型分析方法近年来被应用于人脸跟踪。本文提出了一种基于图像序列贝叶斯框架的人脸跟踪方法。我们假设观察到的空间是三维的(3D),并在三维中建模面部形状,旋转和平移。利用面部平移模型生成三维位置假设。从使用AdaBoost m1算法学习的分类器的输出中计算面部存在的可能性。实验结果表明了该方法对人脸跟踪的有效性。
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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