基于人眼视觉感知的显示屏Gypsophila缺陷检测方法

Xie Wenqiang, Chen Huaixin, Wang Zhixi
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引用次数: 1

摘要

为了提高显示屏中gypsophila的检测精度,提出了一种基于人眼视觉感知的缺陷检测模型。该模型以人的视觉感知信息作为检测的重点。首先利用HSV色彩空间获取原始图像中的色彩信息,并将其与均值约束的RGB灰度图像融合,使灰度图像包含局部色彩信息;以灰度图像为优化基准,自适应获取包含全局颜色信息的单通道图像约束系数。利用变换系数约束下的单通道灰度图进行缺陷检测,提高了缺陷检测的精度。实验结果表明,本文算法的平均缺陷检测准确率和召回率均在95%以上。与传统检测方法相比,准确率提高50%以上。本文的检测方法满足了工业生产的需要。
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Method for Detecting Gypsophila Defect of Display Screen Based on Human Visual Perception
In order to improve the detection accuracy of gypsophila in the display screen, a defect detection model based on human visual perception is proposed. The model uses human visual perception information as the key point of detection. First, the HSV color space is used to obtain the color information in the original image, and it is fused with the mean-constrained RGB gray-scale image to make the grayscale image contain local color information; Taking the grayscale image as the optimization benchmark, adaptively obtain the single-channel image constraint coefficients containing global color information. The single-channel gray map constrained by the transform coefficient is used for defect detection, which improves the accuracy of defect detection. The experimental results show that the average defect detection accuracy and recall rate of the algorithm in this paper are more than 95%. Compared with the traditional detection method, the accuracy rate is improved by more than 50%. The detection method in this paper meets the needs of industrial production.
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