距离数据融合与解释的统计方法

P. Štěpán, L. Preucil
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引用次数: 4

摘要

多传感器的使用是提高移动机器人导航性能的关键。该贡献引入了在信号/像素级上通过数据融合对噪声距离数据进行积分的问题。这是执行多个传感器和不同的传感器位置到一个共同的环境描述。本文讨论了网格模型,该模型用于声纳距离测量的低级表示和数据融合处理。简要概述了网格表示的常用方法,并讨论了不同声纳模型的不同融合方法。重点研究了声呐建模对数据集成过程鲁棒性的影响。本文讨论了提高融合鲁棒性的方法。该方法的新颖之处在于声纳模型的设计依赖于测量距离。另一个改进是门口识别的最优特征选择。通过实例和在声纳传感实验移动平台上的运行情况说明了所设计的方法。
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Statistical approach to range-data fusion and interpretation
Making-use of multiple sensors is crucial for improvement of mobile robot navigation performance. The contribution introduces a problem of integrating noisy range-data by data fusion on signal/pixel level. This is performed for multiple sensors and different sensor positions into a common description of the environment. The paper deals with grid models, which are used as a low-level representations of sonar range measurements as well as for data fusion process. A short overview of used methods for the grid representation is shown and different fusion methods for various sonar models are discussed. Special attention is paid to the influence of sonar modeling on robustness of data integration process. The paper deals with methods for improvement of fusion robustness. Novelty of the presented approach stands in a sonar model which is designed as dependent on measured distance. The other improvement is an optimal feature selection for doorway recognition. The designed methods are illustrated by examples and test runs on experimental mobile platform with sonar sensory system.
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