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Cloud-based map alignment strategies for multi-robot FastSLAM 2.0

机译:用于多机器人FastSLAM 2.0的基于云的地图对齐策略

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The cooperative simultaneous localization and mapping problem has acquired growing attention over the years. Even though mapping of very large environments is theoretically quicker than a single robot simultaneous localization and mapping, it has several additional challenges such as the map alignment and the merging processes, network latency, administering various coordinate systems and assuring synchronized and updated data from all robots and also it demands massive computation. This article proposes an efficient architecture for cloud-based cooperative simultaneous localization and mapping to parallelize its complex steps via the multiprocessor (computing nodes) and free the robots from all of the computation efforts. Furthermore, this work improves the map alignment part using hybrid combination strategies, random sample consensus, and inter-robot observations to exploit fully their advantages. The results show that the proposed approach increases mapping performance with less response time.
机译:多年来,协作式同时定位和制图问题已引起越来越多的关注。尽管从理论上讲,大型环境的映射比单个机器人同时进行本地化和映射要快,但它还面临其他一些挑战,例如地图对齐和合并过程,网络延迟,管理各种坐标系以及确保所有机器人的同步和更新数据而且还需要大量的计算。本文提出了一种有效的架构,用于基于云的协同同时定位和映射,以通过多处理器(计算节点)并行化其复杂步骤,并使机器人摆脱所有计算工作。此外,这项工作使用混合组合策略,随机样本共识和机器人间观察来改进地图对齐部分,以充分利用其优势。结果表明,所提出的方法以更少的响应时间提高了映射性能。

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