3D Feature Detector-Descriptor Pair Evaluation on Point Clouds

Paula Štancelová, E. Sikudová, Z. Černeková
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引用次数: 2

Abstract

In recent years, computer vision research has focused on extracting features from 3D data. In this work, we reviewed methods of extracting local features from objects represented in the form of point clouds. The goal of the work was to make theoretical overview and evaluation of selected point cloud detectors and descriptors. We performed an experimental assessment of the repeatability and computational efficiency of individual methods using the well known Stanford 3D Scanning Repository database with the aim of identifying a method which is computationally-efficient in finding good corresponding points between two point clouds. We also compared the efficiency of detector-descriptor pairing showing that the choice of a descriptor affects the performance of the object recognition based on the descriptor matching. We summarized the results into graphs and described them with respect to the individual tested properties of the methods.
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点云的三维特征检测器-描述子对评价
近年来,计算机视觉研究的重点是从三维数据中提取特征。在这项工作中,我们回顾了从以点云形式表示的对象中提取局部特征的方法。本文的目的是对所选择的点云探测器和描述符进行理论综述和评价。我们使用著名的斯坦福3D扫描存储库数据库对单个方法的可重复性和计算效率进行了实验评估,目的是确定一种计算效率高的方法,在两个点云之间找到良好的对应点。我们还比较了检测器-描述符配对的效率,表明描述符的选择会影响基于描述符匹配的目标识别性能。我们将结果总结成图表,并根据方法的各个测试属性对其进行描述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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