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Nonparametric Segment Detection

机译:非参数段检测

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摘要

In computer and robotic vision point clouds from depth sensors have to be processed to form higher-level concepts such as lines, planes, and objects. Bayesian methods formulate precisely prior knowledge with respect to the noise and likelihood of points given a line, plane, or object. Nonparametric methods also formulate a prior with respect to the number of those lines, planes, or objects. Recently, a nonparametric Bayesian method has been proposed to perform optimal inference simultaneously over line fitting and the number of lines. In this paper we propose a nonparametric Bayesian method for segment fitting. Segments are lines of finite length. This requires 1.) a prior for line segment lengths: the symmetric Pareto distribution, 2.) a sampling method that handles nonconjugacy: an auxiliary variable MCMC method. Results are measured according to clustering performance indicators, such as the Rand Index, the Adjusted Rand Index, and the Hubert metric. Surprisingly, the performance of segment recognition is worse than that of line recognition. The paper therefore concludes with recommendations towards improving Bayesian segment recognition in future work.
机译:在从深度传感器的计算机和机器人视觉点云中必须被处理以形成更高级概念,例如线条,平面和对象。贝叶斯方法在给定线,平面或物体的点的噪声和可能性方面精确地制定了先验的知识。非参数方法还在关于这些线,平面或物体的数量的前提。最近,已经提出了一种非参数贝叶斯方法,以同时在线拟合和线路数进行最佳推理。本文提出了一种非参数贝叶斯方法进行分部拟合。细分是有限长度的线条。这需要1.)用于行段长度之前:对称Pareto分布,2.)处理非协调性的采样方法:辅助变量MCMC方法。结果根据聚类性能指标进行测量,例如RAND指数,调整后的兰特指数和HUBERT指标。令人惊讶的是,段识别的性能比线路识别更糟糕。因此,本文结束了建议在未来的工作中提高贝叶斯分部认可。

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