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Pose estimation of spherically correlated images using eigenspace decomposition in conjunction with spectral theory.

机译:使用本征空间分解结合光谱理论对球形相关图像进行姿态估计。

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摘要

Eigenspace decomposition represents one computationally efficient approach for dealing with object recognition and pose estimation, as well as other vision-based problems, and has been applied to sets of correlated images for this purpose. The general idea behind eigenspace decomposition is that a large set of highly correlated images can be approximately represented by a much smaller subspace. Unfortunately, determining the dimension of the subspace, as well as computing the subspace itself is computationally prohibitive. To make matters worse, this on-line expense increases drastically as the number of correlated images becomes large (which is the case when doing fully general three-dimensional pose estimation or illumination invariant pose estimation). However, previous work has shown that for data correlated in one-dimension, Fourier analysis can help reduce the computational burden of this on-line expense.;The first part of this dissertation extends some of the ideas developed for one-dimensionally correlated image data to data correlated in two- and three-dimensions making fully general three-dimensional pose estimation possible (assuming the object is illuminated from a single distant light source). The first step in this extension is to determine how to capture training images of the object by sampling the two-sphere (S2), and the rotation group (SO(3)) appropriately. Therefore, a thorough analysis of spherical tessellations is performed as applied to the problem of pose estimation. An algorithm is then developed for reducing the on-line computational burden associated with computing the eigenspace by exploiting the spectral information of this spherical data set. The algorithm is based on the fact that, similar to Fourier analysis on the line or circle, spherically correlated functions can be expanded into a finite series using spherical harmonics. It is then shown that the algorithm can be extended to higher dimensions by applying a proper rotation to each of the samples defined on the surface of the sphere. Using this sampling technique, a parameterization of SO(3) is obtained. It is shown that SO(3) correlated functions can be expanded into a finite series by applying a rotation to the set of spherical harmonics and expanding the function using Wigner- D matrices. Experimental results are presented to compare the proposed algorithm to the true eigenspace decomposition, as well as assess the computational savings.;The second part of this dissertation deals with the problem of pose estimation when variations in illumination conditions exist. It is shown that the dimensionality of a set of images of an object under a wide range of illumination conditions and fixed pose can be significantly reduced by expanding the image data in a series of spherical harmonics. This expansion results in a reduced dimensional set of harmonic images". It is shown that the set of harmonic images are capable of recovering a significant amount of information from a set of images captured when both single and multiple illumination sources are present. An algorithm is then developed to estimate the eigenspace of a set of images that contain variation in both illumination and pose. The algorithm is based on projecting the set of harmonic images onto a set of Fourier harmonics by applying Chang's eigenspace decomposition algorithm. Finally, an analysis of eigenspace manifolds is presented when variations in both illumination and pose exist. A technique for illumination invariant pose estimation is developed based on eigenspace partitioning. Experimental results are presented to validate the proposed algorithm in terms of accuracy in estimating the eigenspace, computational savings, and the accuracy of determining the pose of three-dimensional objects under a range of illumination conditions.
机译:本征空间分解代表了一种用于处理对象识别和姿态估计以及其他基于视觉的问题的高效计算方法,并且已为此目的而应用于相关图像集。本征空间分解的基本思想是,一大组高度相关的图像可以由一个较小的子空间近似表示。不幸的是,确定子空间的尺寸以及计算子空间本身在计算上是禁止的。更糟的是,随着相关图像数量的增加,这种在线费用急剧增加(在进行完全通用的三维姿态估计或照明不变姿态估计时就是这种情况)。但是,先前的工作表明,对于一维关联的数据,傅里叶分析可以帮助减轻这种在线费用的计算负担。论文的第一部分扩展了为一维关联的图像数据开发的一些思想二维和三维相关的数据,从而可以进行全面的三维姿态估计(假设从单个远处的光源照亮物体)。此扩展的第一步是确定如何通过对两个球体(S2)和旋转组(SO(3))进行适当的采样来捕获对象的训练图像。因此,对球状镶嵌进行了彻底的分析,并将其应用于姿势估计问题。然后开发一种算法,以通过利用该球形数据集的频谱信息来减少与计算本征空间相关的在线计算负担。该算法基于以下事实:类似于对直线或圆进行傅立叶分析,可以使用球谐函数将球相关函数扩展为有限级数。然后表明,通过对球体表面上定义的每个样本进行适当的旋转,可以将该算法扩展到更高的维度。使用这种采样技术,可以获得SO(3)的参数化。结果表明,通过对一组球谐函数施加旋转并使用Wigner-D矩阵扩展函数,可以将SO(3)相关函数扩展为有限级数。实验结果表明,该算法可与真实的本征空间分解进行比较,并能节省计算量。本论文的第二部分研究了光照条件变化时姿态估计的问题。结果表明,通过在一系列球谐函数中扩展图像数据,可以在很大范围的照明条件和固定姿势下显着降低对象图像集的尺寸。这种扩展导致谐波图像的维数减少。”表明,当同时存在单个和多个照明源时,谐波图像集能够从捕获的图像集中恢复大量信息。然后发展以估计包含照度和姿态变化的一组图像的本征空间,该算法基于通过应用Chang的本征空间分解算法将一组谐波图像投影到一组傅立叶谐波上,最后对本征空间进行分析提出了在光照和姿态都存在变化的情况下的流形,提出了一种基于特征空间划分的光照不变姿态估计技术,并通过实验结果验证了该算法在估计特征空间上的准确性,计算量的节省和准确性。确定以下范围内的三维物体的姿态照明条件。

著录项

  • 作者

    Hoover, Randy C.;

  • 作者单位

    Colorado State University.;

  • 授予单位 Colorado State University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 144 p.
  • 总页数 144
  • 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

  • 入库时间 2022-08-17 11:38:27

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