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Voxel-Based Neighborhood for Spatial Shape Pattern Classification of Lidar Point Clouds with Supervised Learning

机译:基于体素的邻域有监督学习的激光雷达点云空间形状模式分类

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摘要

Improving the effectiveness of spatial shape features classification from 3D lidar data is very relevant because it is largely used as a fundamental step towards higher level scene understanding challenges of autonomous vehicles and terrestrial robots. In this sense, computing neighborhood for points in dense scans becomes a costly process for both training and classification. This paper proposes a new general framework for implementing and comparing different supervised learning classifiers with a simple voxel-based neighborhood computation where points in each non-overlapping voxel in a regular grid are assigned to the same class by considering features within a support region defined by the voxel itself. The contribution provides offline training and online classification procedures as well as five alternative feature vector definitions based on principal component analysis for scatter, tubular and planar shapes. Moreover, the feasibility of this approach is evaluated by implementing a neural network (NN) method previously proposed by the authors as well as three other supervised learning classifiers found in scene processing methods: support vector machines (SVM), Gaussian processes (GP), and Gaussian mixture models (GMM). A comparative performance analysis is presented using real point clouds from both natural and urban environments and two different 3D rangefinders (a tilting Hokuyo UTM-30LX and a Riegl). Classification performance metrics and processing time measurements confirm the benefits of the NN classifier and the feasibility of voxel-based neighborhood.
机译:从3D激光雷达数据提高空间形状特征分类的有效性非常重要,因为它被广泛用作通向自动驾驶汽车和地面机器人的高级场景理解挑战的基本步骤。从这个意义上讲,在密集扫描中为点计算邻域成为训练和分类的昂贵过程。本文提出了一个新的通用框架,该框架通过一个简单的基于体素的邻域计算来实现和比较不同的监督学习分类器,其中通过考虑由定义的支持区域内的特征,将规则网格中每个不重叠体素中的点分配给同一类体素本身。该贡献提供了离线培训和在线分类程序,以及基于对散布,管状和平面形状进行主成分分析的五个替代特征向量定义。此外,通过实施作者先前提出的神经网络(NN)方法以及场景处理方法中发现的其他三个监督学习分类器,评估了该方法的可行性:支持向量机(SVM),高斯过程(GP),和高斯混合模型(GMM)。使用来自自然和城市环境的真实点云以及两个不同的3D测距仪(倾斜的Hokuyo UTM-30LX和Riegl)进行了比较性能分析。分类性能指标和处理时间测量结果证实了NN分类器的优势以及基于体素的邻域的可行性。

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