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Plane-extraction from depth-data using a Gaussian mixture regression model

机译:使用高斯混合回归模型从深度数据中提取平面

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We propose a novel algorithm for unsupervised extraction of piecewise planar models from depth-data. Among other applications, such models are a good way of enabling autonomous agents (robots, cars, drones, etc.) to effectively perceive their surroundings and to navigate in three dimensions. We propose to do this by fitting the data with a piecewise-linear Gaussian mixture regression model whose components are skewed over planes, making them flat in appearance rather than being ellipsoidal, by embedding an outlier-trimming process that is formally incorporated into the proposed expectation-maximization algorithm, and by selectively fusing contiguous, coplanar components. Part of our motivation is an attempt to estimate more accurate plane-extraction by allowing each model component to make use of all available data through probabilistic clustering. The algorithm is thoroughly evaluated against a standard benchmark and is shown to rank among the best of the existing state-of-the-art methods. (C) 2018 Elsevier B.V. All rights reserved.
机译:我们提出了一种从深度数据中无监督提取分段平面模型的新颖算法。在其他应用程序中,此类模型是使自治代理(机器人,汽车,无人机等)能够有效感知周围环境并在三个维度上进行导航的好方法。我们建议通过使用分段线性高斯混合回归模型拟合数据来实现此目的,该模型的成分在平面上偏斜,使它们的外观平坦而不是椭圆形,方法是嵌入离群修剪过程,该过程被正式纳入了预期的期望中-最大化算法,并通过有选择地融合连续的共面分量。我们的部分动机是通过允许每个模型组件通过概率聚类利用所有可用数据来估计更准确的平面提取的尝试。该算法已根据标准基准进行了全面评估,并被证明在现有最先进方法中名列前茅。 (C)2018 Elsevier B.V.保留所有权利。

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