基于小波域扩散的焊接缺陷射线图像去噪方法

F. Boudani, Nafaa Nacereddine
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引用次数: 3

摘要

在本文中,我们的目的是过滤射线摄影焊缝图像,以方便焊缝缺陷的检测和提高自动化工业检测。噪声图像被三种类型的噪声污染:乘性散斑噪声、加性高斯白噪声和两种噪声的混合噪声。基于小波的滤波器和各向异性扩散技术已经证明了它们在降低高斯加性噪声和散斑噪声方面的价值。本文提出了一种基于小波包域扩散的滤波算法,以提高噪声焊接图像的质量。将该方法与其他基于小波的方法进行了比较,实验证明了小波包扩散在降噪和保留缺陷细节方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diffusion In The Wavelet Domain For Denoising Radiographic Images Of Welding Defects
In this paper, we aimed to filter radiographic weld images to facilitate weld defects detection and to improve the automatic industrial inspection. The noisy images were contaminated by three types of noise: the multiplicative speckle noise, the additive Gaussian white noise, and the mixed noise combining the two kinds of noise. Wavelet-based filters and anisotropic diffusion techniques have proven their worth in reducing both Gaussian additive noise and speckle noise. We presented in this work a filtering algorithm based on diffusion in the wavelet packet domain to enhance the quality of the noisy weld images. Comparing the performance of this approach to other wavelet based methods, experiments proved the wavelet packet diffusion’s effectiveness in reducing noise and preserving defects details.
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