A contour detection method for bulk material piles based on cross-source point cloud registration

Pingjun Zhang, Hao Zhao, Guangyang Li, Xipeng Lin
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Abstract

In the field of automatic bulk material loading, accurate detection of the profile of the material pile in the compartment can control its height and distribution, thus improving the loading efficiency and stability, therefore, this paper proposes a new method for pile detection based on cross-source point cloud registration. First, 3D point cloud data are simultaneously collected using lidar and binocular camera. Second, feature points are extracted and described based on 3D scale-invariant features (3DSIFT) and 3D shape contexts (3DSC) algorithms, and then feature points are used in progressive sample consensus (PROSAC) algorithm to complete coarse matching. Then, bi-directional KD-tree accelerated iterative closest point (ICP) is established to complete the fine registration. Ultimately, the detection of the pile contour is realized by extracting the point cloud boundary after the registration. The experimental results show that the registration errors of this method are reduced by 54.2%, 52.4%, and 14.9% compared with the other three algorithms, and the relative error of the pile contour detection is less than 0.2%.
基于跨源点云注册的散装材料桩轮廓检测方法
在散装物料自动装载领域,准确检测厢体内物料堆的轮廓可以控制其高度和分布,从而提高装载效率和稳定性,因此本文提出了一种基于跨源点云注册的新的物料堆检测方法。首先,利用激光雷达和双目摄像头同时采集三维点云数据。其次,基于三维尺度不变特征(3DSIFT)和三维形状上下文(3DSC)算法对特征点进行提取和描述,然后将特征点用于渐进采样共识(PROSAC)算法以完成粗匹配。然后,建立双向 KD 树加速迭代最近点 (ICP),完成精细配准。最后,通过提取配准后的点云边界,实现对桩基轮廓的检测。实验结果表明,与其他三种算法相比,该方法的配准误差分别降低了 54.2%、52.4% 和 14.9%,桩轮廓检测的相对误差小于 0.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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