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Rotational Projection Statistics for 3D Local Surface Description and Object Recognition

机译:用于3D局部表面描述和对象识别的旋转投影统计

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摘要

Recognizing 3D objects in the presence of noise, varying mesh resolution, occlusion and clutter is a very challenging task. This paper presents a novel method named Rotational Projection Statistics (RoPS). It has three major modules: local reference frame (LRF) definition, RoPS feature description and 3D object recognition. We propose a novel technique to define the LRF by calculating the scatter matrix of all points lying on the local surface. RoPS feature descriptors are obtained by rotationally projecting the neighboring points of a feature point onto 2D planes and calculating a set of statistics (including low-order central moments and entropy) of the distribution of these projected points. Using the proposed LRF and RoPS descriptor, we present a hierarchical 3D object recognition algorithm. The performance of the proposed LRF, RoPS descriptor and object recognition algorithm was rigorously tested on a number of popular and publicly available datasets. Our proposed techniques exhibited superior performance compared to existing techniques. We also showed that our method is robust with respect to noise and varying mesh resolution. Our RoPS based algorithm achieved recognition rates of 100, 98.9, 95.4 and 96.0 % respectively when tested on the Bologna, UWA, Queen’s and Ca’ Foscari Venezia Datasets.
机译:在存在噪声,变化的网格分辨率,遮挡和混乱的情况下识别3D对象是一项非常具有挑战性的任务。本文提出了一种新的方法,称为旋转投影统计(RoPS)。它具有三个主要模块:本地参考框架(LRF)定义,RoPS功能描述和3D对象识别。我们提出了一种新颖的技术,通过计算位于局部表面上所有点的散射矩阵来定义LRF。通过将特征点的相邻点旋转投影到2D平面上并计算这些投影点的分布的一组统计信息(包括低阶中心矩和熵)来获得RoPS特征描述符。使用提出的LRF和RoPS描述符,我们提出了一种分层3D对象识别算法。所提出的LRF,RoPS描述符和对象识别算法的性能已在许多流行且可公开获得的数据集上进行了严格测试。与现有技术相比,我们提出的技术表现出卓越的性能。我们还表明,我们的方法在噪声和变化的网格分辨率方面具有鲁棒性。我们的基于RoPS的算法在Bologna,UWA,Queen’s和Ca'Foscari Venezia数据集上进行测试时,分别达到100%,98.9%,95.4%和96.0%的识别率。

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