Typical educational robotics approaches rely on imperative programming for robot navigation. However, with the increasing presence of AI in everyday life, these approaches miss an opportunity to introduce machine learning (ML) techniques grounded in an authentic and engaging learning context. Furthermore, the needs for costly specialized equipment and ample physical space are barriers that limit access to robotics experiences for all learners. We propose ARtonomous, a relatively low-cost, virtual alternative to physical, programming-only robotics kits. With ARtonomous, students employ reinforcement learning (RL) alongside code to train and customize virtual autonomous robotic vehicles. Through a study evaluating ARtonomous, we found that middle-school students developed an understanding of RL, reported high levels of engagement, and demonstrated curiosity for learning more about ML. This research demonstrates the feasibility of an approach like ARtonomous for 1) eliminating barriers to robotics education and 2) promoting student learning and interest in RL and ML.
翻译:典型的教育机器人方法依赖于机器人导航的必备程序;然而,随着AI在日常生活中的存在日益增加,这些方法失去了一个机会,无法在真实和有参与的学习环境中引进机器学习技术;此外,需要昂贵的专门设备和充足的物理空间是限制所有学习者获得机器人经验的障碍;我们建议Aronomous,这是相对低成本的、虚拟的替代物理的、只有编程的机器人包;在ARtonomous,学生在培训和定制虚拟自主机器人飞行器的代码的同时,还采用强化学习(RL)法。我们通过一项评估ARtonomous的研究发现,中学生对RL有了了解,报告的参与程度很高,并对更多了解ML表现出了好奇心。这一研究表明,像ARtonomous这样的方法非常可行,可以(1) 消除机器人教育的障碍,(2) 促进学生对RL和ML的学习和兴趣。