首页> 外文会议>IEEE/RSJ International Conference on Intelligent Robots and Systems;IROS 2012 >DART: A particle-based method for generating easy-to-follow directions
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DART: A particle-based method for generating easy-to-follow directions

机译:DART:一种基于粒子的方法,用于生成易于遵循的方向

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Despite evidence that human wayfinders consider directions involving landmarks or topological descriptions easier to follow, the majority of commerical direction-planning services and GPS navigation units plan routes based on metrically or temporally shortest paths, ignoring this potentially valuable information. We propose a method for generating directions that maximizes the probability of a human arriving at the correct destination, taking into account a model of their ability to follow topological, metrical, and landmark-based directions. We discuss optimization techniques for employing these models and present a method, DART, for extracting model-improved sets of directions in a tractable amount of time. DART employs particle simulation techniques to maximize the probability that the modeled wayfinder will successfully reach their destination. Our synthetic evaluation shows that DART produces improvements in arrival rates over existing methods and illustrates how DART's directions reflect properties of the wayfinder model.
机译:尽管有证据表明人类寻路者认为涉及地标或拓扑描述的方向更容易遵循,但大多数商业方向规划服务和GPS导航单元仍基于度量或时间最短路径来规划路线,而忽略了这种潜在的有价值信息。考虑到人类遵循拓扑,度量和地标方向的能力模型,我们提出了一种产生方向的方法,该方法可以最大程度地提高人类到达正确目的地的可能性。我们讨论了采用这些模型的优化技术,并提出了一种DART方法,用于在可处理的时间内提取模型改进的方向集。 DART使用粒子模拟技术来最大化建模的寻路器成功到达目的地的可能性。我们的综合评估表明,DART与现有方法相比可提高到达率,并说明DART的方向如何反映寻路器模型的属性。

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