软触:一种用于软机械手的传感器放置框架

C. Li, N. Pollard
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引用次数: 1

摘要

传统机械人手抓取任务的传感器放置已经得到了广泛的研究,其目标包括感知必要的接触区域或确定传感器数量对性能的影响。然而,随着新一代灵巧柔软的机器人手根据物体的形状变形,以前的框架可能是不够的。特别是,我们发现现实世界的实验对于确定不同传感器的价值和不同传感器放置的影响至关重要,因为变形的机器人身体,传感器材料特性以及传感器和任务性能之间存在复杂的相互作用。在本文中,我们提出了一种用于灵巧软机械手的传感器放置框架,该框架可以使用现成的传感器轻松地重新配置不同的手部设计。我们的三步框架选择和评估候选传感器配置,以确定每个配置中传感器的有效性,以估计定性和定量操作指标。我们在柔软的机器人手上测试了我们的框架,使用力和惯性传感器为给定的一组操作模式选择最佳的传感器位置。我们的研究表明,传感器放置在接触点是最好的预测定性成功的操作。然而,当涉及到估计定量操作指标时,放置在接触点的现成传感器会降低某些操作类型的性能。这种性能下降可能是由于它们对软机器人系统的表面纹理、变形模式和重量造成的干扰。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SoftTouch: A Sensor-Placement Framework for Soft Robotic Hands
Sensor placement for grasping tasks in conventional robotic hands has been extensively studied, with goals including sensorizing essential contact areas or determining the effect of number of sensors on performance. However, with the new generation of dexterous soft robotic hands that deform to the shape of the object, the former frameworks may not be sufficient. In particular, we find that real-world experiments are essential to determine the value of different sensors and the effect of different sensor placements due to the complex interactions between the deformable robot body, sensor material properties, and sensor and task performance. In this paper, we propose a sensor-placement framework for dexterous soft robotic hands that is easily reconfigurable to different hand designs using off-the-shelf sensors. Our three-step framework selects and evaluates candidate sensor configurations to de-termine the effectiveness of sensors in each configuration for estimating qualitative and quantitative manipulation metrics. We tested our framework on a soft robotic hand to select the optimum sensor placement for a given set of manipulation patterns using force and inertial sensors. Our studies show that sensors placed at contact points are best for predicting the qualitative success of the manipulation. However, when it comes to estimating quantitative manipulation metrics, off-the-shelf sensors placed at contact points decrease performance for some manipulation types. This performance decrease may be due to the disturbance they create to surface texture, deformation patterns, and weight of soft robotic systems.
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