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Watch-Bot: Unsupervised learning for reminding humans of forgotten actions

机译:观看机器人:无监督的学习,提醒人类被遗忘的行为

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We present a robotic system that watches a human using a Kinect v2 RGB-D sensor, detects what he forgot to do while performing an activity, and if necessary reminds the person using a laser pointer to point out the related object. Our simple setup can be easily deployed on any assistive robot. Our approach is based on a learning algorithm trained in a purely unsupervised setting, which does not require any human annotations. This makes our approach scalable and applicable to variant scenarios. Our model learns the action/object co-occurrence and action temporal relations in the activity, and uses the learned rich relationships to infer the forgotten action and the related object. We show that our approach not only improves the unsupervised action segmentation and action cluster assignment performance, but also effectively detects the forgotten actions on a challenging human activity RGB-D video dataset. In robotic experiments, we show that our robot is able to remind people of forgotten actions successfully.
机译:我们介绍了一种使用Kinect V2 RGB-D传感器观看人类的机器人系统,在执行活动时检测到他忘记的操作,以及必要时使用激光指针提醒人员来指出相关对象。我们的简单设置可以轻松部署在任何辅助机器人上。我们的方法是基于纯粹无监督设置培训的学习算法,这不需要任何人类注释。这使我们的方法可扩展,适用于变体方案。我们的模型了解活动中的动作/对象共同发生和动作时间关系,并使用学习丰富的关系来推断出忘记的动作和相关对象。我们表明我们的方法不仅可以提高无监督的动作分割和行动群集分配绩效,而且还有效地检测遗忘的人类活动RGB-D视频数据集。在机器人实验中,我们表明我们的机器人能够成功提醒人们忘记行动。

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