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首页> 外文期刊>International journal of computational vision and robotics >GCSAC: geometrical constraint sample consensus for primitive shapes estimation in 3D point cloud
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GCSAC: geometrical constraint sample consensus for primitive shapes estimation in 3D point cloud

机译:GCSAC:用于3D点云中原始形状估计的几何约束样本共识

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摘要

Estimating parameters of a primitive shape from a point cloud data is a challenging problem due to the data containing noises and computational time demand. In this paper, we present a new robust estimator (named GCSAC, geometrical constraint sample consensus) aimed at solving such issues. The proposed algorithm takes into account geometrical constraints to construct qualified samples for the estimation. Instead of randomly drawing minimal subset of sample, explicit geometrical properties of the interested primitive shapes (e.g., cylinder, sphere and cone) are used to drive the sampling procedures. Based on the collected samples, model estimation and verification procedures of the robust estimator are deployed in GCSAC. Extensive experiments are conducted on synthesised and real datasets. Comparing with the common algorithms of RANSAC family, GCSAC outperforms in term of both the precision of the estimated model and computational time. The implementations of GCSAC and the datasets are made publicly available.
机译:由于数据包含噪声和计算时间需求,因此从点云数据估计原始形状的参数是一个具有挑战性的问题。在本文中,我们提出了一种新的鲁棒估计器(名为GCSAC,几何约束样本共识),旨在解决此类问题。所提出的算法考虑了几何约束来构造用于估计的合格样本。代替随机绘制样本的最小子集,感兴趣的原始形状(例如,圆柱体,球体和圆锥体)的显式几何特性用于驱动采样过程。基于收集的样本,在GCSAC中部署了鲁棒估计器的模型估计和验证过程。在合成的和真实的数据集上进行了广泛的实验。与RANSAC系列的常用算法相比,GCSAC在估计模型的精度和计算时间方面均胜过其表现。 GCSAC的实现和数据集是公开可用的。

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