In recent years, an increased effort has been invested to improve the capabilities of robots. Nevertheless, human-robot interaction remains a complex field of application where errors occur frequently. The reasons for these errors can primarily be divided into two classes. Foremost, the recent increase in capabilities also widened possible sources of errors on the robot's side. This entails problems in the perception of the world, but also faulty behavior, based on errors in the system. Apart from that, non-expert users frequently have incorrect assumptions about the functionality and limitations of a robotic system. This leads to incompatibilities between the user's behavior and the functioning of the robot's system, causing problems on the robot's side and in the human-robot interaction. While engineers constantly improve the reliability of robots, the user's understanding about robots and their limitations have to be addressed as well. In this work, we investigate ways to improve the understanding about robots. For this, we employ FAMILIAR - FunctionAl user Mental model by Increased LegIbility ARchitecture, a transparent robot architecture with regard to the robot behavior and decision-making process. We conducted an online simulation user study to evaluate two complementary approaches to convey and increase the knowledge about this architecture to non-expert users: a dynamic visualization of the system's processes as well as a visual programming interface. The results of this study reveal that visual programming improves knowledge about the architecture. Furthermore, we show that with increased knowledge about the control architecture of the robot, users were significantly better in reaching the interaction goal. Furthermore, we showed that anthropomorphism may reduce interaction success.
翻译:近些年来,我们投入了更大的努力来提高机器人的能力。 然而,人类机器人互动仍然是一个复杂的应用领域,经常发生错误。 错误的原因主要可以分为两类。 最显著的是, 最近能力的增长还扩大了机器人方面可能的错误来源。 这在对世界的看法方面造成了问题,但也造成了基于系统错误的错误行为。 除此之外, 非专家用户往往对机器人系统的功能和局限性有错误的假设。 这导致用户行为与机器人系统功能之间的不兼容性,造成机器人方面和人类机器人互动方面出现的问题。 工程师们不断提高机器人的可靠性, 用户对机器人及其局限性的理解也必须得到解决。 在这项工作中,我们调查如何提高机器人的理解。 此外,我们使用FAMILIAR - 函数用户智能程序模型,通过提高立法能力ARchiteturne, 一个透明的机器人结构结构与机器人行为和人类机器人相互作用的问题不兼容, 造成机器人方面和人类机器人相互作用的问题。 虽然工程师们不断提高机器人的可靠性,但用户对机器人及其局限性的理解也必须得到解决。 我们通过一种视觉结构的模拟方法来进行更好的分析。 我们通过两种视觉结构的模拟来评估, 以更精确地分析,我们可以显示这种视觉结构的视觉结构的视觉结构的视觉结构的演变, 。