三维曲面匹配与识别中的大数据集和混乱场景

Owen Carmichael, Daniel F. Huber, M. Hebert
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引用次数: 58

摘要

本文报道了一种基于局部三维特征的表面匹配算法的最新扩展。该算法在一般曲面的视图配准和三维模型数据库的目标识别方面具有较好的效果。我们描述了对基本匹配算法的扩展,这将使它能够解决在实际数据中遇到的几个具有挑战性和经常被忽视的问题。首先,我们描述了允许我们处理分辨率变化很大的数据集和计算效率是主要问题的大型数据集的扩展。以大型地形图的构建和未配准视图的精确三维模型的构建为例,说明了增强匹配算法的适用性。其次,我们描述了在场景包含大量杂乱(例如,物体占据场景的1%)和场景呈现高度混乱(例如,模型形状接近场景中的其他形状)的情况下方便使用3D物体识别的扩展。最后两个扩展涉及分别使用贝叶斯和基于记忆的学习技术从模型的描述和识别算法的性能中学习识别策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large data sets and confusing scenes in 3-D surface matching and recognition
We report on recent extensions to a surface matching algorithm based on local 3D signatures. This algorithm was previously shown to be effective in view registration of general surfaces and in object recognition from 3D model databases. We describe extensions to the basic matching algorithm which will enable it to address several challenging and often overlooked problems encountered with real data. First, we describe extensions that allow us to deal with data sets with large variations in resolution and with large data sets for which computational efficiency is a major issue. The applicability of the enhanced matching algorithm is illustrated by an example application: the construction of large terrain maps and the construction of accurate 3D models from unregistered views. Second, we describe extensions that facilitate the use of 3D object recognition in cases in which the scene contains a large amount of clutter (e.g., the object occupies 1% of the scene) and in which the scene presents a high degree of confusion (e.g., the model shape is close to other shapes in the scene). Those last two extensions involve learning recognition strategies from the description of the model and from the performance of the recognition algorithm using Bayesian and memory based learning techniques, respectively.
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