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Unified Terrain Mapping Model With Markov Random Fields

机译:马尔可夫随机场的统一地形映射模型

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摘要

A terrain mapping model is proposed using a generalized Markov random field (MRF) representation. Unlike previous work, the proposed MRF can fully represent uncertainties due to sensor pose and measurement errors, as well as data association errors in a single model. Additionally, neither homoscedasticity nor a predefined shape of the likelihood distribution is assumed. The flexibility of an MRF model allows spatial height correlations to be incorporated. The ability to include spatial correlations not only improves the accuracy through the benefits of Bayesian prior modeling, but also serves as a basis for terrain property characterization. Maximum likelihood solutions of terrain roughness are derived. Benefits of the proposed model are demonstrated experimentally on indoor and outdoor datasets. Results show that the MRF model leads to lower height estimation errors. In addition, the capability of estimating non-Gaussian height distributions allows the information about individual terrain features to be preserved. Finally, the model is able to accurately estimate the roughness of the terrain, which is beneficial for edge detection of obstacles and nontraversible terrain regions.
机译:提出了使用广义马尔可夫随机场(MRF)表示的地形映射模型。与以前的工作不同,提出的MRF可以完全代表由于传感器姿态和测量误差以及单个模型中的数据关联误差引起的不确定性。另外,既不假设均值不变性也不表示似然分布的预定形状。 MRF模型的灵活性允许合并空间高度相关性。包含空间相关性的能力不仅通过贝叶斯先验建模的优点提高了准确性,而且还充当了地形特性表征的基础。得出了地形粗糙度的最大似然解。在室内和室外数据集上通过实验证明了该模型的优势。结果表明,MRF模型导致较低的高度估计误差。另外,估计非高斯高度分布的能力允许保留有关各个地形特征的信息。最终,该模型能够准确估计地形的粗糙度,这对于障碍物和不可穿越的地形区域的边缘检测是有利的。

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