Author:
Wan Guoyang,Hu Yaocong,Liu Bingyou,Bai Shoujun,Xing Kaisheng,Tao Xiuwen
Abstract
Purpose
Presently, 6 Degree of Freedom (6DOF) visual pose measurement methods enjoy popularity in the industrial sector. However, challenges persist in accurately measuring the visual pose of blank and rough metal casts. Therefore, this paper introduces a 6DOF pose measurement method utilizing stereo vision, and aims to the 6DOF pose measurement of blank and rough metal casts.
Design/methodology/approach
This paper studies the 6DOF pose measurement of metal casts from three aspects: sample enhancement of industrial objects, optimization of detector and attention mechanism. Virtual reality technology is used for sample enhancement of metal casts, which solves the problem of large-scale sample sampling in industrial application. The method also includes a novel deep learning detector that uses multiple key points on the object surface as regression objects to detect industrial objects with rotation characteristics. By introducing a mixed paths attention module, the detection accuracy of the detector and the convergence speed of the training are improved.
Findings
The experimental results show that the proposed method has a better detection effect for metal casts with smaller size scaling and rotation characteristics.
Originality/value
A method for 6DOF pose measurement of industrial objects is proposed, which realizes the pose measurement and grasping of metal blanks and rough machined casts by industrial robots.
Reference40 articles.
1. Fast deformable model-based human performance capture and FVV using consumer-grade RGB-D sensors;Pattern Recognition,2018
2. On bounded-type thin local sets of the two-dimensional Gaussian free field;Journal of the Institute of Mathematics of Jussieu,2019
3. Gcnet: non-local networks meet squeeze-excitation networks and beyond,2019
4. Dexterous grasping by manipulability selection for mobile manipulator with visual guidance;IEEE Transactions on Industrial Informatics,2018
5. A mini work-cell for handling and assembling microcomponents;Assembly Automation,2014