Research on key technologies of random stacking components automatically crawl

Y. Hancheng, Jin Yanjun, Zhu Xihao, Jiang Seqi
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Abstract

Given the growing demand for intelligence in industrial production, the key technology of robotic arm automatically crawling is being studied and realized using random stacking components as the research object. To begin, the global feature descriptor PPF algorithm is used to extract part features. The visible points that meet the conditions are then combined pairwise in the off-line training stage, and the characteristics of point pairs are calculated to obtain the model describing the object's global information. The components are identified during the online matching stage by employing a voting strategy based on the Hough transform. The RANSAC algorithm is then used for rough pose estimation, and the ICP algorithm is used to fine-tune the pose result to obtain the target's optimal pose estimation. Finally, the transformation matrix after hand-eye calibration based on differential evolution algorithm determines the position and posture of the parts in the real world coordinate system, guiding the manipulator to accurately grab and place the stacked parts. A grab system was built to test it as part of a water pump production line reconstruction project. Using the pump body as an example, the results show that the number of features of the selected point pair is 730,830, the matching accuracy can reach 94.64%, and the matching time consumption is 1.1424 s; the overall average grabbing success rate is 92.3%, which is practical.
随机堆叠构件自动抓取关键技术研究
随着工业生产对智能化要求的不断提高,以随机堆叠构件为研究对象,研究并实现了机械臂自动爬行的关键技术。首先,采用全局特征描述子PPF算法提取零件特征。然后在离线训练阶段对满足条件的可见点进行配对,计算点对的特征,得到描述目标全局信息的模型。通过采用基于霍夫变换的投票策略,在在线匹配阶段识别组件。然后使用RANSAC算法进行粗略姿态估计,并使用ICP算法对姿态结果进行微调,以获得目标的最优姿态估计。最后,基于差分进化算法的手眼标定后的变换矩阵确定零件在现实世界坐标系中的位置和姿态,指导机械手准确抓取和放置堆叠零件。作为水泵生产线改造项目的一部分,建立了抓取系统对其进行测试。以泵体为例,结果表明:选取的点对特征个数为730,830个,匹配精度可达94.64%,匹配耗时为1.1424 s;总体平均抓取成功率为92.3%,比较实用。
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