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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >HoPPF: A novel local surface descriptor for 3D object recognition
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HoPPF: A novel local surface descriptor for 3D object recognition

机译:HOPPF:用于3D对象识别的新型局部表面描述符

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摘要

Three-dimensional feature descriptors play an important role in 3D computer vision because they are widely employed in many 3D perception applications to extract point correspondences between two point clouds. However, most existing description methods suffer from either weak robustness, low descriptiveness, or costly computation. Thus, a 3D local feature descriptor named Histograms of Point Pair Features (HoPPF) is proposed in this paper, and it is aimed at robust representation, high descriptiveness, and efficient computation. First, we propose a novel method to redirect surface normals and use the Poisson-disk sampling strategy to solve the problem of data redundancy in data pre-processing. Second, a new technique is applied to divide the local point pair set of each keypoint into eight regions. Then, the distribution of local point pairs of each region is used to construct the corresponding sub-features. Finally, the proposed HoPPF is generated by concatenating all sub-features into a vector. The performance of the HoPPF method is rigorously evaluated on several standard datasets. The results of the experiments and comparisons with other state-of-the-art methods validate the superiority of the HoPPF descriptor in term of robustness, descriptiveness, and efficiency. Moreover, the proposed technique for division of point pair sets is used to modify the other typical point-pair-based descriptor (i.e., PFH) to show its generalization ability. The proposed HoPPF is also applied to object recognition on real datasets captured by different devices (e.g., Kinect and LiDAR) to verify the feasibility of this method for 3D vision applications. (C) 2020 Elsevier Ltd. All rights reserved.
机译:三维特征描述符在3D计算机视觉中发挥着重要作用,因为它们广泛用于许多3D感知应用,以提取两个点云之间的点对应。然而,大多数现有的描述方法遭受弱稳健性,低描述性或昂贵的计算。因此,在本文中提出了一种名为点对特征(HOPPF)直方图的3D本地特征描述符,并且它旨在以鲁棒的表示,高描述性和有效的计算。首先,我们提出了一种新的方法来重定向表面法线,并使用泊松磁盘采样策略来解决数据预处理中的数据冗余问题。其次,应用新技术将每个关键点的本地点对集分为八个区域。然后,每个区域的局部点对的分布用于构造相应的子特征。最后,通过将所有子特征连接到向量中来生成所提出的HOPPF。在几个标准数据集上严格评估HOPPF方法的性能。实验和与其他最先进的方法的实验和比较结果验证了HoppF描述符的优越性,在鲁棒性,描述性和效率方面。此外,用于分组组的划分技术用于修改其他基于点对的基于点对的描述符(即,PFH)以显示其泛化能力。所提出的HOPPF还应用于由不同设备(例如,Kinect和LIDAR)捕获的实际数据集上的对象识别,以验证该方法对3D视觉应用的方法。 (c)2020 elestvier有限公司保留所有权利。

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