Fast Radius Outlier Filter Variant for Large Point Clouds

IF 2.2 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Data Pub Date : 2023-10-02 DOI:10.3390/data8100149
Péter Szutor, Marianna Zichar
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引用次数: 0

Abstract

Currently, several devices (such as laser scanners, Kinect, time of flight cameras, medical imaging equipment (CT, MRI, intraoral scanners)), and technologies (e.g., photogrammetry) are capable of generating 3D point clouds. Each point cloud type has its unique structure or characteristics, but they have a common point: they may be loaded with errors. Before further data processing, these unwanted portions of the data must be removed with filtering and outlier detection. There are several algorithms for detecting outliers, but their performances decrease when the size of the point cloud increases. The industry has a high demand for efficient algorithms to deal with large point clouds. The most commonly used algorithm is the radius outlier filter (ROL or ROR), which has several improvements (e.g., statistical outlier removal, SOR). Unfortunately, this algorithm is also limited since it is slow on a large number of points. This paper introduces a novel algorithm, based on the idea of the ROL filter, that finds outliers in huge point clouds while its time complexity is not exponential. As a result of the linear complexity, the algorithm can handle extra large point clouds, and the effectiveness of this is demonstrated in several tests.
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大型点云的快速半径离群值滤波变体
目前,有几种设备(如激光扫描仪、Kinect、飞行时间照相机、医学成像设备(CT、MRI、口内扫描仪))和技术(如摄影测量)能够生成3D点云。每种点云类型都有其独特的结构或特征,但它们有一个共同点:它们可能充满错误。在进一步的数据处理之前,必须通过过滤和离群值检测去除这些不需要的数据部分。有几种检测异常点的算法,但随着点云规模的增大,它们的性能下降。业界对处理大型点云的高效算法有很高的需求。最常用的算法是半径离群值过滤器(ROL或ROR),它有几个改进(例如,统计离群值去除,SOR)。不幸的是,这种算法也有局限性,因为它在大量的点上很慢。本文介绍了一种基于ROL滤波器思想的新算法,该算法在时间复杂度不呈指数级的情况下发现巨大点云中的异常点。由于线性复杂性,该算法可以处理超大的点云,并在几个测试中证明了该算法的有效性。
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来源期刊
Data
Data Decision Sciences-Information Systems and Management
CiteScore
4.30
自引率
3.80%
发文量
0
审稿时长
10 weeks
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