Unified mixture-model based terrain estimation with Markov Random Fields

Rina Tse, N. Ahmed, M. Campbell
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引用次数: 17

Abstract

This paper proposes a Markov Random Field (MRF) representation for sensor and terrain information fusion in a 2.5D map. Unlike in the previous works, the proposed MRF formally models the sensor pose and measurement uncertainties, thus allowing the measurements to be appropriately fused with terrain information. Additionally, the MRF's graphical modelbased representation allows for an easy modification to the probabilistic dependencies among variables, permitting a more flexible and general model including terrain spatial correlations to be studied. The use of an MRF representation also makes it easier to perform factorization and inference on any variable subset of interests. Results show that the addition of a terrain MRF model not only helps reduce the estimation error, but also serves as a basis for terrain property characterization, which is useful for future terrain analyses such as traversability assessments in ground robot navigation.
基于马尔可夫随机场的统一混合模型地形估计
提出了一种基于马尔可夫随机场(MRF)的2.5D地图传感器与地形信息融合方法。与以前的工作不同,所提出的MRF正式建模传感器姿态和测量不确定性,从而允许测量适当地与地形信息融合。此外,MRF基于图形模型的表示允许轻松修改变量之间的概率依赖关系,从而允许研究更灵活和更通用的模型,包括地形空间相关性。使用MRF表示还可以更容易地对任何变量子集进行分解和推理。结果表明,地形MRF模型的加入不仅有助于减少估计误差,而且为地形属性表征提供了基础,为地面机器人导航中可穿越性评估等地形分析提供了依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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