Matching unorganized data sets using multi-scale feature points

Wu Weiyong, Wang Yinghui
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引用次数: 0

Abstract

In order to match partly overlapped data clouds measured from different view point, a multi-scale feature points detecting algorithm was proposed. A few feature points can be extracted from large number of original data quickly. This algorithm consists of three steps: discrete curvature computing, bilateral filtering process and feature points detecting. The number of feature points can be controlled by scale parameter approximately. After we got two feature point sets, an exhaustive searching process was carried out for maximal congruent triangles between two feature point sets, with which rotation and translation matrix could be computed easily to register original data sets. Although the exhaustive search is a time-consuming process, we still got high running speed by controlling the number of feature points.
使用多尺度特征点匹配无组织数据集
为了匹配不同视点测量的部分重叠数据云,提出了一种多尺度特征点检测算法。可以从大量的原始数据中快速提取少量的特征点。该算法包括三个步骤:离散曲率计算、双边滤波处理和特征点检测。特征点的数量可以通过尺度参数进行近似控制。在得到两个特征点集后,对两个特征点集之间的最大同余三角形进行穷举搜索,从而方便地计算出旋转平移矩阵来配准原始数据集。虽然穷举搜索是一个耗时的过程,但通过控制特征点的数量,我们仍然获得了较高的运行速度。
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