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Practical object-grasp estimation without visual or tactile information for heavy-duty work machines

机译:无需视觉或触觉信息的实用工件抓取估计,适用于重型作业机械

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This paper proposes a practical framework to estimate whether or not a grapple installed in demolition machines is in a grasp state. Object grasp is a highly difficult task that requires safe and precise operations, so identifying a grasp or non-grasp state is important for assisting an operator. These types of outdoor machines lack visual and tactile sensors, so the proposed framework adopts practically available lever operation and cylinder pressure sensors. The grasp is formed by a grasp motion, which is operations to make the grapple pinch an object, and the grasp state, where the grapple holds the object in any manipulator movements. Thus, the framework determi-nately confirms the grasp motion through the requisite conditions defined by using sequential changes of binarized operation and pressure data for the grapple and the manipulator, and stochastically confirms the grasp state through the enhancement conditions defined by using force and movement vectors including vertical downward force, movement in the longer direction, and horizontal reciprocating movement. The results of experiments conducted to transport objects using an instrumented hydraulic arm indicated that the proposed framework is effective for identifying graspon-grasp with high accuracy, independently of various operators and environments.
机译:本文提出了一个实用的框架来估计安装在拆卸机器中的擒托造成的抓斗处于掌握状态。对象掌握是一种非常困难的任务,需要安全和精确的操作,因此识别掌握或非掌握状态对于协助运营商非常重要。这些类型的户外机器缺乏视觉和触觉传感器,因此所提出的框架采用实际可用的杠杆操作和气缸压力传感器。通过抓握运动形成抓握,该运动是使擒抱夹住物体的操作,以及抓握在任何操纵器移动中的抓握状态。因此,该框架通过使用通过使用力和运动向量定义的增强条件时,通过使用通过使用力和运动向量定义的增强条件来确定通过所需的条件来确定掌握抓握运动。包括垂直向下的力,在较长方向上的运动和水平往复运动。使用仪表液压臂进行运输物体的实验结果表明,所提出的框架可有效地识别掌握/非抓握高精度,独立于各种操作员和环境。

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