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Probabilistic Active Filtering for Object Search in Clutter

机译:杂波中对象搜索的概率主动过滤

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This paper proposes a probabilistic approach for object search in clutter. Due to heavy occlusions, it is vital for an agent to be able to gradually reduce uncertainty in observations of the objects in its workspace by systematically rearranging them. Probabilistic methodologies present a promising sample-efficient alternative to handle the massively complex state-action space that inherently comes with this problem, avoiding the need for both exhaustive training samples and the accompanying heuristics for traversing a large-scale model during runtime. We approach the object search problem by extending a Gaussian Process active filtering strategy with an additional model for capturing state dynamics as the objects are moved over the course of the activity. This allows viable models to be built upon relatively scarce training data, while the complexity of the action space is also reduced by shifting objects over relatively short distances. Validation in both simulation and with a real Baxter robot with a limited number of training samples demonstrates the efficacy of the proposed approach.
机译:本文提出了一种用于杂波中目标搜索的概率方法。由于严重的遮挡,代理必须能够通过系统地重新布置对象来逐渐减少其工作区中观察对象的不确定性。概率方法论提供了一个有希望的高效样本替代方案,以处理此问题固有的大规模复杂状态操作空间,从而避免了详尽的训练样本以及在运行时遍历大规模模型所需的启发式方法。我们通过扩展高斯过程主动过滤策略和一个附加模型来解决对象搜索问题,该模型用于在对象在活动过程中移动时捕获状态动态。这允许在相对稀缺的训练数据上建立可行的模型,同时通过在相对较短的距离上移动对象也可以减少动作空间的复杂性。在模拟中以及使用训练样本数量有限的真实Baxter机器人进行的验证都证明了该方法的有效性。

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