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Temporal persistence modeling for object search

机译:用于对象搜索的时间持久性建模

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We present a novel solution to the object search problem for domains in which object permanence cannot be assumed and other agents may move objects between locations without the robot's knowledge. We formalize object search as a failure analysis problem and contribute temporal persistence modeling (TPM), an algorithm for probabilistic prediction of the time that an object is expected to remain at a given location given sparse prior observations. We show that probabilistic exponential distributions augmented with a Gaussian component can accurately represent probable object locations and search suggestions based entirely on sparsely made visual observations. We evaluate our work in two domains, a large scale GPS location data set for person tracking, and multi-object tracking on a mobile robot operating in a small-scale household environment over a 2-week period. TPM performance exceeds four baseline methods across all study conditions.
机译:我们向对象搜索问题提出了一种新的解决方案,用于对象持久性无法假设,其他代理可以在没有机器人的知识的情况下移动位置之间的对象。我们将对象搜索形式化为失败分析问题并贡献时间持久性建模(TPM),一种概率预测对象预期在给定位置留在给定的位置的概率预测算法。我们表明,使用高斯组件增强的概率指数分布可以准确地代表可能的对象位置,并完全基于稀疏性的视觉观测的搜索建议。我们在两个域中评估我们的工作,为人员跟踪的大规模GPS位置数据设置,以及在2周内在小规模的家庭环境中运行的移动机器人的多对象跟踪。 TPM性能超过了所有研究条件的四种基线方法。

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