Development and validation of a real-time vision-based automatic HDMI wire-split inspection system

Yu-Chen Chiu, Chi-Yi Tsai, Po-Hsiang Chang
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Abstract

In the production process of HDMI cables, manual intervention is often required, resulting in low production efficiency and time-consuming. The paper presents a real-time vision-based automatic inspection system for HDMI cables to reduce the labor requirement in the production process. The system consists of hardware and software design. Since the wires in HDMI cables are tiny objects, the hardware design includes an image capture platform with a high-resolution camera and a ring light source to acquire high-resolution and high-quality images of the wires. The software design includes a data augmentation system and an automatic HDMI wire-split inspection system. The former aims to increase the number and diversity of training samples. The latter is designed to detect the coordinate position of the wire center and the corresponding Pin-ID (pid) number and output the results to the wire-bonding machine to perform subsequent tasks. In addition, a new HDMI cable dataset is created to train and evaluate a series of existing detection network models for this study. The experimental results show that the detection accuracy of the wire center using the existing YOLOv4 detector reaches 99.9%. Furthermore, the proposed system reduces the execution time by about 38.67% compared with the traditional manual wire-split inspection operation.

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开发和验证基于视觉的实时自动 HDMI 分线检测系统
在 HDMI 电缆的生产过程中,往往需要人工干预,导致生产效率低且耗时长。本文介绍了一种基于视觉的 HDMI 电缆实时自动检测系统,以减少生产过程中的人力需求。该系统由硬件和软件设计组成。由于 HDMI 电缆中的电线是微小物体,因此硬件设计包括一个带有高分辨率摄像头和环形光源的图像捕捉平台,以获取高分辨率和高质量的电线图像。软件设计包括一个数据增强系统和一个 HDMI 线缆分路自动检测系统。前者旨在增加训练样本的数量和多样性。后者旨在检测电线中心的坐标位置和相应的 Pin-ID (pid) 编号,并将结果输出给电线绑定机以执行后续任务。此外,本研究还创建了一个新的 HDMI 电缆数据集,用于训练和评估一系列现有的检测网络模型。实验结果表明,使用现有的 YOLOv4 检测器对电线中心的检测准确率达到 99.9%。此外,与传统的人工分线检测操作相比,所提出的系统减少了约 38.67% 的执行时间。
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