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HYBRID MACHINE LEARNING-BASED SYSTEMS AND METHODS FOR TRAINING AN OBJECT PICKING ROBOT WITH REAL AND SIMULATED PERFORMANCE DATA

机译:基于混合机器学习的系统和方法,用真实和模拟的性能数据训练对象拾取机器人

摘要

For training an object picking robot with real and simulated grasp performance data, grasp locations on an object are assigned based on object physical properties. A simulation experiment for robot grasping is performed using a first set of assigned locations. Based on simulation data from the simulation, a simulated object grasp quality of the robot is evaluated for each of the assigned locations. A first set of candidate grasp locations on the object is determined based on data representative of simulated grasp quality from the evaluation. Based on sensor data from an actual experiment for the robot grasping using each of the candidate grasp locations, an actual object grasp quality is evaluated for each of the candidate locations.
机译:为了用真实的和模拟的抓地性能数据训练对象拾取机器人,根据对象的物理属性分配对象的抓地位置。使用第一组指定位置执行用于机器人抓取的模拟实验。基于来自仿真的仿真数据,针对每个分配位置评估机器人的仿真对象抓握质量。基于代表来自评估的模拟抓握质量的数据,确定对象上的第一组候选抓握位置。基于来自使用每个候选抓握位置进行机器人抓取的实际实验的传感器数据,针对每个候选位置评估实际物体抓握质量。

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