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SHORT: A fast 3D feature description based on estimating occupancy in spherical shell regions

机译:简短内容:基于估算球形壳体区域中的占用率的快速3D特征描述

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We propose a novel feature description method called SHORT (Shell Histograms and Occupancy from Radial Transform) for fast 3D object recognition. In 3D object recognition for point cloud data, it is very important to detect keypoints and describe features rapidly because of the huge amount of data involved. The state-of-the-art keypoint detection methods calculate statistics including covariance matrices from the point cloud in local regions of the object. Then, the state-of-the-art method, which describe features such as normal vector distributions of the point cloud, use all points in the local regions. However, these methods involve high processing costs because they need to calculate the statistics needed for keypoint detection. They also need to use a lot of points in the regions for feature description. By contrast, the SHORT method consists of a fast keypoint detector that does not calculate statistics and a fast feature descriptor that uses only a small number of points in the restricted local regions. The keypoint detector uses occupancy estimated simply like counting the points in regions of outermost shells in spheres, and the feature descriptor uses estimated those and a small number of points including the spherical shell regions of multiple scales. Experimental results in 3D object recognition show that the processing speed of the proposed method is five times faster than that of a comparative method that had a nearly equal 99.4% recognition success rate.
机译:我们提出了一种新颖的特征描述方法,称为SHORT(径向变换的贝壳直方图和占有率),用于快速3D对象识别。在点云数据的3D对象识别中,重要的是要检测关键点并快速描述特征,因为涉及的数据量很大。最新的关键点检测方法可计算统计信息,包括来自对象局部区域中的点云的协方差矩阵。然后,描述点云的法线向量分布等特征的最新方法将使用局部区域中的所有点。但是,这些方法需要高昂的处理成本,因为它们需要计算关键点检测所需的统计信息。他们还需要在区域中使用很多点进行特征描述。相比之下,SHORT方法由不计算统计信息的快速关键点检测器和仅在受限局部区域中仅使用少量点的快速特征描述符组成。关键点检测器使用估计的占用率就像对球体中最外壳的区域中的点进行计数一样,而特征描述符使用估计的占用率和少量点(包括多个比例的球形壳区域)来进行估计。在3D对象识别中的实验结果表明,与具有99.4%的识别成功率几乎相等的比较方法相比,该方法的处理速度快了五倍。

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