匹配三维模型与形状分布

R. Osada, T. Funkhouser, B. Chazelle, D. Dobkin
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引用次数: 692

摘要

测量三维形状之间的相似性是一个基本问题,在计算机视觉、分子生物学、计算机图形学和许多其他领域都有应用。这个问题的一个挑战是找到一个合适的形状签名,可以快速构建和比较,同时仍然区分相似和不相似的形状。本文提出并分析了一种计算任意(可能是退化的)三维多边形模型的形状特征的方法。关键思想是将对象的特征表示为从测量对象全局几何属性的形状函数中采样的形状分布。该方法的主要动机是将形状匹配问题简化为概率分布的比较,这比传统的形状匹配方法需要姿态配准、特征对应或模型拟合更简单。我们发现,简单形状函数的采样分布之间的差异(例如,表面上两个随机点之间的距离)为中等大小的数据库中区分物体类别(例如汽车与飞机)提供了一种鲁棒方法,尽管存在任意平移、旋转、缩放、反射、细分、简化和模型退化。该方法可以作为预分类器应用于目标识别系统或交互式内容检索应用中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Matching 3D models with shape distributions
Measuring the similarity between 3D shapes is a fundamental problem, with applications in computer vision, molecular biology, computer graphics, and a variety of other fields. A challenging aspect of this problem is to find a suitable shape signature that can be constructed and compared quickly, while still discriminating between similar and dissimilar shapes. In this paper, we propose and analyze a method for computing shape signatures for arbitrary (possibly degenerate) 3D polygonal models. The key idea is to represent the signature of an object as a shape distribution sampled from a shape function measuring the global geometric properties of an object. The primary motivation for this approach is to reduce the shape matching problem to the comparison of probability distributions, which is simpler than traditional shape matching methods that require pose registration, feature correspondence or model fitting. We find that the dissimilarities between sampled distributions of simple shape functions (e.g. the distance between two random points on a surface) provide a robust method for discriminating between classes of objects (e.g. cars versus airplanes) in a moderately sized database, despite the presence of arbitrary translations, rotations, scales, reflections, tessellations, simplifications and model degeneracies. They can be evaluated quickly, and thus the proposed method could be applied as a pre-classifier in an object recognition system or in an interactive content-based retrieval application.
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