Overview of Computer Vision Techniques in Robotized Wire Harness Assembly: Current State and Future Opportunities
Hao Wang, Omkar Salunkhe, Walter Quadrini, Dan L\"amkull, Fredrik Ore,, Bj\"orn Johansson, Johan Stahre

TL;DR
This paper reviews computer vision methods used in automating wire harness assembly in automotive manufacturing, highlighting current challenges, research gaps, and future opportunities for practical robotized solutions.
Contribution
It provides a comprehensive overview of computer vision techniques in wire harness assembly and identifies key research gaps for advancing automation in this field.
Findings
Computer vision enables better perception of flexible wire harnesses.
Current solutions face challenges in practical, flexible environments.
Research gaps include handling deformability and improving robustness.
Abstract
Wire harnesses are essential hardware for electronic systems in modern automotive vehicles. With a shift in the automotive industry towards electrification and autonomous driving, more and more automotive electronics are responsible for energy transmission and safety-critical functions such as maneuvering, driver assistance, and safety system. This paradigm shift places more demand on automotive wire harnesses from the safety perspective and stresses the greater importance of high-quality wire harness assembly in vehicles. However, most of the current operations of wire harness assembly are still performed manually by skilled workers, and some of the manual processes are problematic in terms of quality control and ergonomics. There is also a persistent demand in the industry to increase competitiveness and gain market share. Hence, assuring assembly quality while improving ergonomics…
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Taxonomy
TopicsRobot Manipulation and Learning · Industrial Vision Systems and Defect Detection · Advanced Machining and Optimization Techniques
