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Interest Point Detection in 3D Point Cloud Data Using 3D Sobel-Harris Operator

机译:使用3D Sobel-Harris算子在3D点云数据中进行兴趣点检测

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摘要

Manual selection of features from massive unstructured point cloud data is a very time-consuming task that requires a considerable amount of human intervention. This work is motivated by the need of fast and simple algorithm to obtain robust, stable and well-localized interest points that are used for subsequent processing in computer vision real-time applications. This paper presents an algorithm for detection of interest points in three-dimensional (3D) point cloud data by using a combined 3D Sobel-Harris operator. The proposed algorithm is compared with six state-of-the-art approaches used to identify the true feature points. Extensive experiments were carried out using synthetic benchmark and real datasets. The datasets were selected with different sizes, features and scales. The results were evaluated against human generated ground truth and predefined feature points. Three measures were used to evaluate the algorithm accuracy, namely localization accuracy L-e, False Positive Error (FPE) and False Negative Errors (FNE). Also, the complexity analysis of the proposed algorithm is presented. The results show that the proposed algorithm can identify the interest points with accepted accuracy. It works directly on point cloud datasets and shows superiority when compared with other methods work on 3D mesh data.
机译:从大量非结构化点云数据中手动选择特征是一项非常耗时的任务,需要大量的人工干预。这项工作的动力是需要快速而简单的算法来获得鲁棒,稳定和位置良好的兴趣点,这些兴趣点可用于计算机视觉实时应用程序中的后续处理。本文提出了一种使用组合3D Sobel-Harris算子检测三维(3D)点云数据中兴趣点的算法。将所提出的算法与用于识别真实特征点的六种最新方法进行了比较。使用综合基准和真实数据集进行了广泛的实验。选择了具有不同大小,特征和比例的数据集。针对人类生成的地面真相和预定义的特征点对结果进行了评估。三种方法用于评估算法的准确性,即定位精度L-e,误报率(FPE)和误报率(FNE)。此外,提出了该算法的复杂度分析。实验结果表明,该算法能够准确识别出兴趣点。它直接在点云数据集上工作,并且与在3D网格数据上使用的其他方法相比具有优越性。

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