对工程图纸进行光学字符识别,实现生产质量控制自动化

Javier Villena Toro, A. Wiberg, M. Tarkian
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引用次数: 1

摘要

数字化是实现机械产品生产质量控制自动化的关键一步。工程图纸是生产信息的重要载体,但其复杂性给计算机视觉带来了挑战。为了实现自动化质量控制,模拟图纸和CAD/CAM软件之间的无缝数据传输是必要的。方法:研究工程图纸文本的自动检测与识别。该方法分为五个阶段。首先,使用图像处理技术对绘图中的关键元素进行分类和识别。输出分为三个元素:信息块和表、特征控制帧和图像的其余部分。对于每个元素,提出了一个OCR管道。最后一个阶段是表格式信息的输出生成。结果:提出的eDOCr工具在检测中达到了90%的准确率和召回率,在识别中达到了94%的f1分,字符错误率为8%。该工具可以实现工程图纸和质量控制之间的无缝集成。讨论:由于其固有的复杂性,大多数OCR算法在应用于机械图纸时都有局限性,包括测量,方向,公差和特殊符号,如几何尺寸和公差(GD&T)。eDOCr工具克服了这些限制,为自动化质量控制提供了解决方案。结论:eDOCr工具为工程图纸文本自动检测与识别提供了有效的解决方案。该工具的成功表明,通过数字化可以实现机械产品的自动化质量控制。该工具通过Github与研究社区共享。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optical character recognition on engineering drawings to achieve automation in production quality control
Introduction: Digitization is a crucial step towards achieving automation in production quality control for mechanical products. Engineering drawings are essential carriers of information for production, but their complexity poses a challenge for computer vision. To enable automated quality control, seamless data transfer between analog drawings and CAD/CAM software is necessary. Methods: This paper focuses on autonomous text detection and recognition in engineering drawings. The methodology is divided into five stages. First, image processing techniques are used to classify and identify key elements in the drawing. The output is divided into three elements: information blocks and tables, feature control frames, and the rest of the image. For each element, an OCR pipeline is proposed. The last stage is output generation of the information in table format. Results: The proposed tool, called eDOCr, achieved a precision and recall of 90% in detection, an F1-score of 94% in recognition, and a character error rate of 8%. The tool enables seamless integration between engineering drawings and quality control. Discussion: Most OCR algorithms have limitations when applied to mechanical drawings due to their inherent complexity, including measurements, orientation, tolerances, and special symbols such as geometric dimensioning and tolerancing (GD&T). The eDOCr tool overcomes these limitations and provides a solution for automated quality control. Conclusion: The eDOCr tool provides an effective solution for automated text detection and recognition in engineering drawings. The tool's success demonstrates that automated quality control for mechanical products can be achieved through digitization. The tool is shared with the research community through Github.
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