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Rapid and non-invasive surface crack detection for pressed-panel products based on online image processing

机译:基于在线图像处理的压板产品快速无创表面裂纹检测

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摘要

Crack detection during the manufacturing process of pressed-panel products is an important aspect of quality management. Traditional approaches for crack detection of those products are subjective and expensive because they are usually performed by experienced human inspectors. Therefore, the development and implementation of an automated and accurate inspection system is required for the manufacturing process. In this article, a crack detection technique based on image processing is proposed that utilizes the images of panel products captured by a regular camera system. First, the binary panel object image is extracted from various backgrounds after considering the color factor. Edge lines are then generated from a binary image using a percolation process. Finally, crack detection and localization is performed with a unique edge-line evaluation. In order to demonstrate the capability of the proposed technique, lab-scale experiments were carried out with a thin aluminum plate. In addition, a test was performed with the panel images acquired at an actual press line. Experimental results show that the proposed technique could effectively detect panel cracks at an improved rate and speed. The experimental results also demonstrate that the proposed technique could be an extension of structural health monitoring frameworks into a new manufacturing application.
机译:压板产品制造过程中的裂纹检测是质量管理的重要方面。这些产品的传统裂纹检测方法主观且昂贵,因为它们通常是由经验丰富的检查人员执行的。因此,制造过程需要开发和实施自动且准确的检查系统。在本文中,提出了一种基于图像处理的裂缝检测技术,该技术利用了常规摄像机系统捕获的面板产品的图像。首先,在考虑色彩因素之后,从各种背景中提取二进制面板对象图像。然后使用渗滤过程从二进制图像生成边缘线。最后,通过独特的边缘评估来执行裂纹检测和定位。为了证明所提出的技术的能力,实验室规模的实验是用一块薄铝板进行的。另外,对在实际压制线上获得的面板图像进行了测试。实验结果表明,所提出的技术能够以提高的速率和速度有效地检测面板裂缝。实验结果还表明,提出的技术可以将结构健康监测框架扩展到新的制造应用中。

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