基于时空对象建模的主动机器人辅助

Maithili Patel, S. Chernova
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引用次数: 7

摘要

主动机器人辅助使机器人能够在没有明确要求的情况下预测并提供用户的需求。我们将主动协助定义为机器人预测与日常用户程序相关的物体运动的时间模式的问题,并通过放置物体以适应用户的需求来主动协助用户。引入生成图神经网络,从对象排列的时间序列中学习统一的对象动态时空预测模型。我们还提供了来自日常生活(HOMER)数据集的家庭物体运动,该数据集跟踪了五个模拟家庭50多天内与人类日常生活活动相关的家庭物体。我们的模型在预测物体运动方面优于领先的基线,正确预测11.1%的物体的位置,错误预测11.5%的人类用户使用的物体的位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Proactive Robot Assistance via Spatio-Temporal Object Modeling
Proactive robot assistance enables a robot to anticipate and provide for a user's needs without being explicitly asked. We formulate proactive assistance as the problem of the robot anticipating temporal patterns of object movements associated with everyday user routines, and proactively assisting the user by placing objects to adapt the environment to their needs. We introduce a generative graph neural network to learn a unified spatio-temporal predictive model of object dynamics from temporal sequences of object arrangements. We additionally contribute the Household Object Movements from Everyday Routines (HOMER) dataset, which tracks household objects associated with human activities of daily living across 50+ days for five simulated households. Our model outperforms the leading baseline in predicting object movement, correctly predicting locations for 11.1% more objects and wrongly predicting locations for 11.5% fewer objects used by the human user.
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