基于三维模型的人脸识别图像归一化

Z. Riaz, M. Beetz, B. Radig
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引用次数: 0

摘要

本文介绍了一种基于三维点分布模型和二维点分布模型的图像分割归一化技术。这种分割方法对于整体图像识别算法是有效的。该结果已通过使用Cohn Kanade面部表情数据库(CKFED)的人脸识别应用程序进行了测试。该方法首先将模型拟合到人脸图像中,并将其注册到标准模板中。模型由二维和三维的点分布组成。我们使用主成分分析从归一化图像中提取一组特征向量,并将其用于二叉决策树进行分类。3D模型的识别率高达98.75%,2D模型的识别率为92.93%,这表明了归一化的良好性。这些实验是在数据库中的3500多张人脸图像上进行的。该算法能够在存在面部表情的情况下实时工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image normalization for face recognition using 3D model
This paper describes an image segmentation and normalization technique using 3D point distribution model and its counterpart in 2D space. This segmentation is efficient to work for holistic image recognition algorithm. The results have been tested with face recognition application using Cohn Kanade Facial Expressions Database (CKFED). The approach follows by fitting a model to face image and registering it to a standard template. The models consist of distribution of points in 2D and 3D. We extract a set of feature vectors from normalized images using principal components analysis and using them for a binary decision tree for classification. A promising recognition rate of up to 98.75% has been achieved using 3D model and 92.93% using 2D model emphasizing the goodness of our normalization. The experiments have been performed on more than 3500 face images of the database. This algorithm is capable to work in real time in the presence of facial expressions.
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