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Defect Straw Inspection Method Based on Machine Vision

机译:基于机器视觉的秸秆缺陷检测方法

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摘要

The visual inspection of defect straw can overcome the shortcomings of manual inspection, such as low accuracy, low efficiency, and poor real-time performance. It plays an important role in improving the production capacity and automation level of the enterprise. This paper takes telescopic straws as the research object, divides the defect types into global defects and local defects by analyzing the characteristics of each defect, and elaborate on the detection process and detection algorithm involved for each defect. A detection method from global to local is proposed by using image processing technology. In addition, this paper also proposes a new corner detection method, which has strong robustness to target corner detection in noisy images after experimental comparison. Finally, after experimental verification, the defect detection rate of the detection method proposed in this paper reached 98.8%.
机译:目测缺陷秸秆可以克服手工检查的缺点,如准确性低,效率低,实时性差等。它对提高企业的生产能力和自动化水平起着重要作用。本文以伸缩吸管为研究对象,通过分析每种缺陷的特征将缺陷类型分为整体缺陷和局部缺陷,并详细阐述了每种缺陷的检测过程和检测算法。提出了一种利用图像处理技术从全局到局部的检测方法。此外,本文还提出了一种新的角点检测方法,该方法经过实验比较,对噪声图像中的目标角点检测具有很强的鲁棒性。最后,经实验验证,本文提出的检测方法的缺陷检出率达到98.8%。

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