NCC-RANSAC: A fast plane extraction method for navigating a smart cane for the visually impaired

X. Qian, C. Ye
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引用次数: 20

Abstract

This paper presents a new RANSAC based method for extracting planes from 3D range data. The generic RANSAC Plane Extranction (PE) method may over-extract a plane. It may fail in the case of a multi-step scene where the RANSAC process results in multiple inlier patches that form a slant plane straddling the steps. The CC-RANSAC algorithm overcomes the latter limitation if the inlier patches are separate. However, it fails when the inlier patches are connected. A typical scenario is a stairway with a stairwall. In this case the RANSAC plane-fitting produces inlier patches (in the tread, riser and stairwall planes) that connect together to form a plane. The proposed method, called NCC-RANSAC, performs a normal-coherence check to all data points of the inlier patches and removes those points whose normal directions are contradictory to that of the fitted plane. This procedure results in a set of separate inlier patches, each of which is then extended into a plane in its entirety by a recursive plane clustering process. The RANSAC plane-fitting and recursive plane clustering processes are repeated until no more planes are found. A probabilistic model is introduced to predict the success probability of the NCC-RANSAC method and validated with the real data of a 3D camera-SwissRanger SR4000. Experimental results demonstrate that the proposed method extracts more accurate planes with less computational time than the existing RANSAC based methods. The proposed method is intended to be used by a robotic navigational device for the visually impaired for object detection/recognition in indoor environments.
NCC-RANSAC:一种为视障人士导航的快速平面提取方法
提出了一种基于RANSAC的三维距离数据平面提取方法。通用的RANSAC平面提取(PE)方法可能会过度提取一个平面。在多步骤场景的情况下,RANSAC过程会产生多个内部补丁,形成跨越步骤的斜面,这可能会失败。CC-RANSAC算法克服了后一种限制,即如果内层补丁是分开的。但是,当内部补丁连接时,它会失败。一个典型的场景是一个带有楼梯墙的楼梯。在这种情况下,RANSAC平面装配会产生内部补丁(在胎面、立管和楼梯面),这些补丁连接在一起形成一个平面。所提出的方法称为nc - ransac,该方法对内层斑块的所有数据点进行法向一致性检查,并去除那些法线方向与拟合平面相矛盾的点。这一过程产生了一组独立的内层补丁,然后通过递归平面聚类过程将每个内层补丁扩展到一个完整的平面中。重复RANSAC平面拟合和递归平面聚类过程,直到没有找到更多的平面。采用概率模型预测了NCC-RANSAC方法的成功率,并用三维相机swissranger SR4000的实际数据进行了验证。实验结果表明,与现有基于RANSAC的方法相比,该方法能够以更少的计算时间提取出更精确的平面。所提出的方法旨在用于视觉受损的机器人导航设备,用于室内环境中的物体检测/识别。
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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