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Anticipatory detection of turning in humans for intuitive control of robotic mobility assistance

机译:用于人类转向的预期检测,直观控制机器人移动性援助

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摘要

Many wearable lower-limb robots for walking assistance have been developed in recent years. However, it remains unclear how they can be commanded in an intuitive and efficient way by their user. In particular, providing robotic assistance to neurologically impaired individuals in turning remains a significant challenge. The control should be safe to the users and their environment, yet yield sufficient performance and enable natural human-machine interaction. Here, we propose using the head and trunk anticipatory behaviour in order to detect the intention to turn in a natural, non-intrusive way, and use it for triggering turning movement in a robot for walking assistance. We therefore study head and trunk orientation during locomotion of healthy adults, and investigate upper body anticipatory behaviour during turning. The collected walking and turning kinematics data are clustered using the k-means algorithm and cross-validation tests and k-nearest neighbours method are used to evaluate the performance of turning detection during locomotion. Tests with seven subjects exhibited accurate turning detection. Head anticipated turning by more than 400500 ms in average across all subjects. Overall, the proposed method detected turning 300 ms after its initiation and 1230 ms before the turning movement was completed. Using head anticipatory behaviour enabled to detect turning faster by about 100 ms, compared to turning detection using only pelvis orientation measurements. Finally, it was demonstrated that the proposed turning detection can improve the quality of human-robot interaction by improving the control accuracy and transparency.
机译:近年来开发了许多可穿戴的小肢体机器人进行待遇。但是,它仍然尚不清楚他们如何由他们的用户以直观和有效的方式命令。特别是,向神经学障碍者提供机器人援助仍然是一个重大挑战。控制应对用户及其环境安全,但产生足够的性能并实现自然的人机交互。在这里,我们建议使用头部和躯干预期行为,以检测要以自然,非侵入方式转动的意图,并使用它来触发机器人的转动运动以进行步行辅助。因此,我们在健康成年人的运动期间研究头部和躯干定位,并在转弯期间调查上半身的预期行为。使用K-means算法和交叉验证测试和k-ingelatibors方法进行聚类,用于评估运动过程中的转动检测性能的跨验证测试进行聚类。具有七个受试者的测试表现出精确的转弯检测。在所有科目中,头部预期超过400500毫秒。总的来说,在完成转动运动之前检测到在其启动和1230ms之后检测到300ms的所提出的方法。与仅使用仅使用骨盆取向测量的打开检测相比,使用最终预期行为以检测更快地检测到大约100毫秒。最后,证明所提出的转向检测可以通过提高控制精度和透明度来提高人机交互的质量。

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