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Superpixel Clustering and Planar Fit Segmentation of 3D LIDAR Point Clouds

机译:3D LIDAR点云的Superpixel聚类和平面拟合分割

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Terrestrial laser scanning (TLS, also called ground based Light Detection and Ranging, LIDAR) is an effective data acquisition method capable of high precision, detailed 3D models for surveying natural environments. However, despite the high density, and quality, of the data itself, the data acquired contains no direct intelligence necessary for further modeling and analysis - merely the 3D geometry (XYZ), 3-component color (RGB), and laser return signal strength (I) for each point. One common task for LIDAR data processing is the selection of an appropriate methodology for the extraction of geometric features from the irregularly distributed point clouds. Such recognition schemes must accomplish both segmentation and classification. Planar (or other geometrically primitive) feature extraction is a common method for point cloud segmentation, however, current algorithms are computationally expensive and often do not utilize color or intensity information. In this paper we present an efficient algorithm, that takes advantage of both colorimetric and geometric data as input and consists of three principal steps to accomplish a more flexible form of feature extraction. First, we employ a Simple Linear Iterative Clustering (SLIC) super pixel algorithm for clustering and dividing the colorimetric data. Second, we use a plane-fitting technique on each significantly smaller cluster to produce a set of normal vectors corresponding to each super pixel. Last, we utilize a Least Squares Multi-class Support Vector Machine (LSMSVM) to classify each cluster as either "ground", "wall", or "natural feature". Despite the challenging problems presented by the occlusion of features during data acquisition, our method effectively generates accurate (>85%) segmentation results by utilizing the color space information, in addition to the standard geometry, during segmentation.
机译:陆地激光扫描(TLS,也称为基于地面的光检测和测距,LIDAR)是一种能够高精度,详细的测量自然环境的3D模型的有效数据采集方法。然而,尽管存在高密度和质量,但数据本身,所获取的数据不包含进一步建模和分析所需的直接智能 - 仅仅是3D几何(XYZ),3组件颜色(RGB)和激光返回信号强度(i)每个点。 LIDAR数据处理的一个共同任务是选择来自不规则分布点云的几何特征的适当方法。此类核查计划必须完成分割和分类。平面(或其他几何原始)特征提取是点云分割的常见方法,然而,当前算法是计算昂贵的并且通常不利用颜色或强度信息。在本文中,我们提出了一种有效的算法,它利用了比色和几何数据作为输入,包括三个主要步骤来实现更灵活的特征提取形式。首先,我们采用一个简单的线性迭代聚类(SLIC)超像素算法,用于聚类和划分比色数据。其次,我们在每个明显较小的簇上使用平面拟合技术以产生与每个超像素对应的一组正常向量。最后,我们利用了最小二乘多级支持向量机(LSMSVM)来将每个群集分类为“RINGE”,“WALL”或“自然功能”。尽管数据采集期间特征闭塞呈现了具有挑战性的问题,但我们的方法通过在分割期间使用颜色空间信息,通过利用颜色空间信息,我们的方法有效地产生准确的(> 85%)分段结果。

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