Gopinath Deepak, Jain Siddarth, Argall Brenna D
Department of Mechanical Engineering, Northwestern University, Evanston, IL, 60208, USA.
Rehabilitation Institute of Chicago, Chicago IL, 60211 USA.
IEEE Robot Autom Lett. 2017 Jan;2(1):247-254. doi: 10.1109/LRA.2016.2593928. Epub 2016 Jul 22.
In this paper, we propose a mathematical framework which formalizes user-driven customization of shared autonomy in assistive robotics as a nonlinear optimization problem. Our insight is to allow the , rather than relying on standard optimization techniques, to perform the optimization procedure, thereby allowing us to leave the exact nature of the cost function indeterminate. We ground our formalism with an interactive optimization procedure that customizes control sharing using an assistive robotic arm. We also present a pilot study that explores interactive optimization with end-users. This study was performed with 17 subjects (4 with spinal cord injury, 13 without injury). Results show all subjects were able to converge to an assistance paradigm, suggesting the existence of optimal solutions. Notably, the amount of assistance was not always optimized for task performance. Instead, some subjects favored retaining more control during the execution over better task performance. The study supports the case for user-driven customization and provides guidance for its continued development and study.
在本文中,我们提出了一个数学框架,该框架将辅助机器人中用户驱动的共享自主性定制形式化为一个非线性优化问题。我们的见解是允许 ,而不是依赖标准优化技术来执行优化过程,从而使我们能够让成本函数的确切性质不确定。我们通过一个交互式优化过程来建立我们的形式体系,该过程使用辅助机器人手臂来定制控制共享。我们还展示了一项探索与终端用户进行交互式优化的试点研究。这项研究是对17名受试者(4名脊髓损伤患者,13名未受伤者)进行的。结果表明,所有受试者都能够收敛到一种辅助模式,这表明存在最优解。值得注意的是,辅助量并不总是针对任务性能进行优化的。相反,一些受试者在执行过程中更倾向于保留更多控制权,而不是追求更好的任务性能。该研究支持了用户驱动定制的情况,并为其持续发展和研究提供了指导。