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Rank-Based Decision Fusion for 3D Shape-Based Face Recognition

机译:基于等级的决策融合,用于基于3D形状的人脸识别

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摘要

In 3D face recognition systems, 3D facial shape information plays an important role. Various shape representations have been proposed in the literature. The most popular techniques are based on point clouds, surface normals, facial profiles, and statistical analysis of depth images. The contribution of the presented work can be divided into two parts: In the first part, we have developed face classifiers which use these popular techniques. A comprehensive comparison of these representation methods are given using 3D RMA dataset. Experimental results show that the linear discriminant analysis-based representation of depth images and point cloud representation perform best. In the second part of the paper, two different multiple-classifier architectures are developed to fuse individual shape-based face recognizers in parallel and hierarchical fashions at the decision level. It is shown that a significant performance improvement is possible when using rank-based decision fusion in ensemble methods.
机译:在3D人脸识别系统中,3D人脸形状信息起着重要作用。文献中已经提出了各种形状表示。最受欢迎的技术是基于点云,表面法线,面部轮廓和深度图像的统计分析。提出的工作可以分为两个部分:在第一部分中,我们开发了使用这些流行技术的面部分类器。使用3D RMA数据集对这些表示方法进行了全面比较。实验结果表明,基于线性判别分析的深度图像表示和点云表示性能最佳。在本文的第二部分中,开发了两种不同的多分类器体系结构,以在决策层以并行和分层的方式融合各个基于形状的面部识别器。结果表明,在集成方法中使用基于秩的决策融合时,可以显着提高性能。

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