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An novel image de-noising model based on gradient and adaptive curvature features and its application

机译:基于梯度和自适应曲率特征及其应用的新型图像去噪模型

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摘要

In this paper, an image de-noising model with gradient and adaptive curvature features is proposed for the visual inspection of the appearance defects of high-density flexible integrated circuit package substrates with strict line-width and line distance. Firstly, the model proposed in this paper adaptively adjusts the weight of the level set curvature feature and the gradient feature of the image, and uses more abundant first-order differential and second-order differential information of the image as the detection factor for image de-noising. Secondly, theoretical analysis shows that the diffusion intensity of the model in the flat region is larger than that of the classical model, and the de-noising effect is better. Furthermore, at the corners and peaks of the image, the proposed model can suppress the reduction of the gray value and preserve more detailed information of the image and edges. Finally, the experimental analysis shows that the proposed model has the best de-noising effect compared with other models. The method proposed in this paper can effectively remove the noise of the image of the high-density flexible integrated circuit package substrate, and at the same time retain more original details and edge information of the image which has practical significance.
机译:在本文中,提出了一种具有梯度和自适应曲率特征的图像去噪模型,用于目视检查具有严格的线宽和线距的高密度柔性集成电路封装基板的外观缺陷。首先,本文提出的模型适自适应地调整图像的级别曲率特征的重量和图像的梯度特征,并使用图像的更丰富的一阶差分和二阶差分信息作为图像DE的检测因子 - 不良。其次,理论分析表明,扁平区域中模型的扩散强度大于经典模型的模型,并且更好的去噪效果。此外,在图像的角落和峰值处,所提出的模型可以抑制灰度值的减小并保持图像和边缘的更详细信息。最后,实验分析表明,与其他模型相比,所提出的模型具有最佳的脱模效果。本文提出的方法可以有效地消除高密度柔性集成电路封装基板的图像的噪声,同时保持具有实际意义的图像的更多原始细节和边缘信息。

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