利用IMU和ArUco标记跟踪自适应手施加的接触力解码

Nathan Elangovan, Anany Dwivedi, Lucas Gerez, Che-Ming Chang, Minas Liarokapis
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引用次数: 6

摘要

自适应的、欠驱动的、柔顺的机械手为完全驱动的、刚性的机器人设备提供了一个有希望的替代方案,后者通常被认为是执行需要显著灵巧性的复杂任务。自适应手越来越受欢迎的原因是,即使在重大的物体姿势或其他环境不确定的情况下,它们也能够稳定地抓取,它们的重量轻、价格合理的设计,以及它们的直观性和易于操作。关于可能的应用,自适应手已经成功地用于执行鲁棒抓取和灵巧的手持操作任务。然而,这种特殊类型的手也有某些缺点和缺陷。例如,使用欠驱动会导致手指在接触后重新配置,这可能会影响手在捏握时的用力能力。在本文中,我们关注的方法来预测接触力施加自适应手在捏抓,利用他们的接触后重构轮廓。手指的弯曲轮廓是用ArUco跟踪器和IMU传感器记录的,这些传感器嵌入到自适应手指上,并用于训练适当的回归模型。更准确地说,我们检验了机器学习技术(随机森林)在预测自适应手指重构阶段施加的接触力方面的效率。通过实验验证了该方法的准确性,该方法适用于各种条件,包括机器人手指相对于所使用的力传感器的不同介词位置。
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Employing IMU and ArUco Marker Based Tracking to Decode the Contact Forces Exerted by Adaptive Hands
Adaptive, underactuated, and compliant robot hands offer a promising alternative to the fully-actuated, rigid robotic devices that are typically considered for the execution of complex tasks that require significant dexterity. The increasing popularity of adaptive hands is due to their ability to extract stable grasps even under significant object pose or other environmental uncertainties, their lightweight and affordable designs and their intuitiveness and easiness of operation. Regarding possible applications, adaptive hands have been successfully used for the execution of both robust grasping and dexterous, in-hand manipulation tasks. However, the particular class of hands also suffers from certain shortcomings and drawbacks. For example, the use of underactuation leads to a post-contact reconfiguration of the fingers that may affect the force exertion capabilities of the hands during pinch grasping. In this paper, we focus on methods to predict the contact forces exerted by adaptive hands in pinch grasps, using their postcontact reconfiguration profile. The bending profiles of the fingers are recorded using ArUco trackers and IMU sensors that are embedded on the adaptive fingers and which are used to train appropriate regression models. More precisely, we examine the efficiency of the machine learning technique (Random Forests) in predicting the exerted contact forces during the reconfiguration phase of an adaptive finger. The accuracy of the proposed method is experimentally validated for a wide range of conditions, involving different prepositionings of the robot finger with respect to the employed force sensor.
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