多尺度三维特征提取与匹配

Hadi Fadaifard, G. Wolberg
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引用次数: 10

摘要

局部三维形状匹配是指计算三维物体局部区域之间相似度的过程。如果没有输入对象的尺度以及它们的旋转和平移的\emph{先验}知识,这仍然是一个困难的挑战。本文主要研究未知尺度三维物体之间的部分形状匹配问题。我们考虑了任意三维表面上的人脸检测问题,并引入了一种多尺度表面表示来进行特征提取和匹配。这项工作的动机是图像的尺度空间理论。基于尺度空间的技术已被证明在处理二维图像匹配应用中的噪声和尺度变化方面非常成功。然而,缺乏有效和实用的三维曲面的尺度空间表示。我们提出的尺度空间表示是根据热方程的表面曲率的演变来定义的。这种表示对噪声不敏感,计算效率高,并且能够自动选择尺度。给出了人脸检测和曲面配准的实例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiscale 3D Feature Extraction and Matching
Partial 3D shape matching refers to the process of computing a similarity measure between partial regions of 3D objects. This remains a difficult challenge without \emph{a priori} knowledge of the scale of the input objects, as well as their rotation and translation. This paper focuses on the problem of partial shape matching among 3D objects of unknown scale. We consider the problem of face detection on arbitrary 3D surfaces and introduce a multiscale surface representation for feature extraction and matching. This work is motivated by the scale-space theory for images. Scale-space based techniques have proven very successful for dealing with noise and scale changes in matching applications for 2D images. However, efficient and practical scale-space representations for 3D surfaces are lacking. Our proposed scale-space representation is defined in terms of the evolution of surface curvatures according to the heat equation. This representation is shown to be insensitive to noise, computationally efficient, and capable of automatic scale selection. Examples in face detection and surface registration are given.
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