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Robust geometrically invariant features for two-dimensional shape matching and three-dimensional face recognition.

机译:用于二维形状匹配和三维人脸识别的强大几何不变特征。

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摘要

Invariant features play a key role in object and pattern recognition studies. Features that are invariant to geometrical transformations offer succinct representations of underlying objects so that they can be reliably identified.; In this dissertation, we introduce a family of novel invariant features based on Cartan's theory of moving frames. We call these new features summation invariants. Compared to existing invariant features, summation invariants are inherently numerically stable, and do not require computationally complex numerical integrations or analytical representations of underlying data. We develop robust methods for extracting summation invariants from sampled 2D contours and 3D surfaces. We further apply these new invariant features to 2D and 3D object recognition problems.; In an application to a 2D shape recognition problem, we compare the performance of the proposed 2D contour summation invariant features with that of integral invariant features as well as wavelet invariant features. We observe marked performance enhancement achieved by the new summation invariant features.; The summation invariant features are also successfully applied to 3D face recognition applications. We propose robust methods to extract summation invariant features based on 2D contours and 3D shapes of given facial range images. We further work out an optimal feature selection and decision fusion method to select the most discriminating invariant features. The same method also facilitates the development of a multi-region face recognition method that achieves higher performance than using a monolithic facial image. To validate the proposed novel 3D face recognition algorithms, we test them on the Face Recognition Grand Challenge (FRGC) version 2 dataset with a data corpus of more than 50,000 facial images. The multi-region summation-invariant algorithm outperforms the best results in the recent FRGC report.; To conclude, we introduce a systematic approach for constructing robust geometrically invariant features. The proposed features provide improved accuracy and are applicable to a wide range of pattern recognition applications. These are versatile features that can be adapted to an engineer's choice of transformation group, such as rigid, affine, or similarity transformation group, to mention a few.
机译:不变特征在对象和模式识别研究中起关键作用。不变的几何变换特征提供了基础对象的简洁表示,因此可以可靠地识别它们。本文基于卡丹运动框架理论,介绍了一系列新颖的不变特征。我们称这些新特征为求和不变量。与现有不变式特征相比,求和不变式本质上在数值上是稳定的,不需要计算复杂的数值积分或基础数据的解析表示。我们开发了从采样的2D轮廓和3D曲面中提取求和不变式的可靠方法。我们进一步将这些新的不变特征应用于2D和3D对象识别问题。在对二维形状识别问题的应用中,我们比较了所提出的二维轮廓求和不变特征与积分不变特征以及小波不变特征的性能。我们观察到通过新的求和不变特征实现的显着性能增强。求和不变特征也已成功应用于3D人脸识别应用程序。我们提出了基于给定面部范围图像的2D轮廓和3D形状来提取求和不变特征的鲁棒方法。我们进一步设计出一种最佳的特征选择和决策融合方法,以选择最能区分的不变特征。相同的方法还促进了多区域面部识别方法的开发,该方法比使用整体式面部图像具有更高的性能。为了验证提出的新颖3D人脸识别算法,我们在人脸识别大挑战(FRGC)版本2数据集上测试了它们,该数据集的数据集超过50,000张人脸图像。多区域求和不变算法优于最近的FRGC报告中的最佳结果。总而言之,我们介绍了一种用于构造鲁棒的几何不变特征的系统方法。所提出的特征提供了改进的准确性,并且适用于广泛的模式识别应用。这些都是通用功能,可以适应工程师对转换组的选择,例如,刚性,仿射或相似转换组。

著录项

  • 作者

    Lin, Wei-Yang.;

  • 作者单位

    The University of Wisconsin - Madison.;

  • 授予单位 The University of Wisconsin - Madison.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 137 p.
  • 总页数 137
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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