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Adaptive Robot-Assisted Feeding: An Online Learning Framework for Acquiring Previously Unseen Food Items

机译:自适应机器人辅助喂养:用于获取以前看不见的食品的在线学习框架

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A successful robot-assisted feeding system requires bite acquisition of a wide variety of food items. It must adapt to changing user food preferences under uncertain visual and physical environments. Different food items in different environmental conditions require different manipulation strategies for successful bite acquisition. Therefore, a key challenge is how to handle previously unseen food items with very different success rate distributions over strategy. Combining low-level controllers and planners into discrete action trajectories, we show that the problem can be represented using a linear contextual bandit setting. We construct a simulated environment using a doubly robust loss estimate from previously seen food items, which we use to tune the parameters of off-the-shelf contextual bandit algorithms. Finally, we demonstrate empirically on a robot- assisted feeding system that, even starting with a model trained on thousands of skewering attempts on dissimilar previously seen food items, e-greedy and LinUCB algorithms can quickly converge to the most successful manipulation strategy.
机译:一个成功的机器人辅助供给系统需要咬采集的各种各样的食品。它必须适应在不确定的视觉和物理环境变化的用户饮食偏好。在不同的环境条件下不同的食物需要成功收购咬操纵不同的策略。因此,一个关键的挑战是如何将具有非常不同的成功率分布在策略处理以前看不到的食品。低级别的控制器和规划者组合成离散的动作轨迹,我们表明,问题可以使用线性上下文匪设置来表示。我们构造采用从先前看到的食物,我们用它来调过的,现成的情境匪算法的参数的双稳健的损失估计在模拟环境。最后,我们经验证明一个机器人 - 辅助料系统,即使训练有素的上千种尝试家伙串上不同以前看过的食品模型,电子贪婪和LinUCB算法开始可以快速收敛到最成功的操作策略。

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