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Teaching System for Multimodal Object Categorization by Human-Robot Interaction in Mixed Reality

机译:混合现实中的人体机器人相互作用的多模式对象分类教学系统

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As service robots are becoming essential to support aging societies, teaching them how to perform general service tasks is still a major challenge preventing their deployment in daily-life environments. In addition, developing an artificial intelligence for general service tasks requires bottom-up, unsupervised approaches to let the robots learn from their own observations and interactions with the users. However, compared to the top-down, supervised approaches such as deep learning where the extent of the learning is directly related to the amount and variety of the pre-existing data provided to the robots, and thus relatively easy to understand from a human perspective, the learning status in bottom-up approaches is by their nature much harder to appreciate and visualize. To address these issues, we propose a teaching system for multimodal object categorization by human-robot interaction through Mixed Reality (MR) visualization. In particular, our proposed system enables a user to monitor and intervene in the robot’s object categorization process based on Multimodal Latent Dirichlet Allocation (MLDA) to solve unexpected results and accelerate the learning. Our contribution is twofold by 1) describing the integration of a service robot, MR interactions, and MLDA object categorization in a unified system, and 2) proposing an MR user interface to teach robots through intuitive visualization and interactions.
机译:随着服务机器人正成为支持老化社会至关重要,教导他们如何执行一般服务任务仍然是一个重大挑战,防止他们在日常生活环境中的部署。此外,为一般服务任务开发人工智能需要自下而上的,无监督的方法,让机器人从自己的观察和与用户互动中学习。然而,与自上而下的监督方法相比,如深度学习,学习的程度与提供给机器人的预先存在的数据的数量和各种直接相关,因此从人类的角度来看相对容易理解,自下而上方法中的学习状态是他们的本质更难欣赏和可视化。为了解决这些问题,我们提出了一种通过混合现实(MR)可视化的人机互动的多模式对象分类的教学系统。特别是,我们的建议系统使用户能够基于多模式潜在Dirichlet分配(MLDA)来监视和干预机器人的对象分类过程,以解决意外结果并加速学习。我们的贡献是双重的1)描述了服务机器人,交互和MLDA对象分类的集成,以及2)提出通过直观可视化和交互来教导机器人的MR用户界面。

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