ROAICVSep 24, 2023

Deep Learning-Based Connector Detection for Robotized Assembly of Automotive Wire Harnesses

arXiv:2309.13746v123 citationsh-index: 4
Originality Synthesis-oriented
AI Analysis

This addresses the need for improved assembly quality and ergonomics in automotive manufacturing, but it is incremental as it applies existing deep learning methods to a new dataset.

This paper tackles the problem of detecting automotive wire harness connectors for robotized assembly by developing deep learning-based object detection models, achieving effectiveness but with limitations due to connector exterior designs.

The shift towards electrification and autonomous driving in the automotive industry results in more and more automotive wire harnesses being installed in modern automobiles, which stresses the great significance of guaranteeing the quality of automotive wire harness assembly. The mating of connectors is essential in the final assembly of automotive wire harnesses due to the importance of connectors on wire harness connection and signal transmission. However, the current manual operation of mating connectors leads to severe problems regarding assembly quality and ergonomics, where the robotized assembly has been considered, and different vision-based solutions have been proposed to facilitate a better perception of the robot control system on connectors. Nonetheless, there has been a lack of deep learning-based solutions for detecting automotive wire harness connectors in previous literature. This paper presents a deep learning-based connector detection for robotized automotive wire harness assembly. A dataset of twenty automotive wire harness connectors was created to train and evaluate a two-stage and a one-stage object detection model, respectively. The experiment results indicate the effectiveness of deep learning-based connector detection for automotive wire harness assembly but are limited by the design of the exteriors of connectors.

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