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Representing and updating objects' identities in semantic SLAM

机译:在语义SLAM中表示和更新对象的身份

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Simultaneous localization and mapping (SLAM) deals with localizing and mapping in unknown environment. Semantic SLAM incorporates an additional layer of objects identities and their relationships. Here we suggest representing the identity of an object in semantic SLAM as a probability distribution over the object's traits, such as labels, colors, shapes, materials, etc. Objects' identities are estimated by integrating measurements from different sensors and are distinguished based on the discrepancy between the underlying probability distributions as quantified by the Bhattacharyya distance. The semantic mapping scheme is tested both in simulation and experiment using a ground robot.
机译:同步本地化和映射(SLAM)处理未知环境中的本地化和映射。语义SLAM包含了对象身份及其关系的附加层。在这里,我们建议在语义SLAM中将对象的身份表示为对象特征(如标签,颜色,形状,材料等)上的概率分布。通过集成来自不同传感器的测量值来估计对象的身份,并基于Bhattacharyya距离量化的潜在概率分布之间的差异。使用地面机器人在仿真和实验中都测试了语义映射方案。

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