Advanced spraying task strategy for bicycle-frame based on geometrical data of workpiece

Chyi-Yeu Lin, Z. Abebe, S. Chang
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引用次数: 5

Abstract

Path planning and trajectory generation are the primary tasks for spray painting applications. However, for the most efficient spraying application, the detailed dimensional information of the workpiece along the generated path is essential. This paper introduces the shape signature approach for automatic identification and measurement of cross-sectional information of a bicycle frame model for advanced spraying task of 6-DOF robot. The path planning is generated from skeletal line of the point cloud model of the bicycle frame which is reconstructed by Kinect Fusion based algorithm. Cross-sectional shape and dimensions are autonomously identified along the generated spray-gun path and subsequently the corresponding spray task is applied in each segment. The spray-gun orientation and painting condition such as the spray speed, volume rate and internal and external pressures are automatically adjusted according to the cross-sectional information and nature of the path at the current pose of the end effector.
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基于工件几何数据的自行车车架喷涂任务高级策略
路径规划和轨迹生成是喷漆应用的主要任务。然而,为了最有效的喷涂应用,工件沿着生成路径的详细尺寸信息是必不可少的。介绍了一种用于六自由度机器人高级喷涂任务的自行车车架模型截面信息自动识别与测量的形状签名方法。利用基于Kinect Fusion算法重构的自行车车架点云模型骨架线生成路径规划。沿着生成的喷枪路径自动识别截面形状和尺寸,然后在每个段上应用相应的喷涂任务。根据末端执行器当前位姿下路径的横截面信息和性质,自动调整喷枪的方向和喷涂条件,如喷涂速度、体积速率和内外压力。
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