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Anisotropic diffusion based denoising on X-radiography images to detect weld defects

机译:基于各向异性的扩散基于X造影图像的去噪,以检测焊接缺陷

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摘要

This paper proposes a machine vision scheme for denoising, feature space gradient preserving, and detecting weld defects in noisy weld X-radiography images; particularly, for the images that are in low contrast and contain noises. The detection of small weld defects present on noisy image is extremely difficult in non-destructive testing through machine vision. The presence of high gradient magnitude and the low intensity in the feature space of a noisy image are the main characteristics of weld defects. These characteristics can be considered to refine and obtain noise-free images for detection of weld defects. This study proposes a modified anisotropic diffusion model, which considers a local probability value of gray-level and an adaptive threshold parameter in diffusion coefficient function to adjust the implication of low edge gradient of the feature space from the noisy image. Furthermore, an entropy based stopping criterion has been introduced to terminate the diffusion process. This proposed model is compared with the existing models, and its performance is evaluated through Mean Square Error (MSE), Signal-to-Noise Ratio (SNR), Peak Signal-to-Noise Ratio (PSNR), Entropy (E) and Mean Structural Similarity (MSSIM) measures. Experimental results confirm the reliability of the proposed model. (C) 2017 Elsevier Inc. All rights reserved.
机译:本文提出了一种用于去噪,特征空间梯度保存的机器视觉方案,并检测嘈杂的焊接X造影图像中的焊接缺陷;特别是,对于低对比度并包含噪声的图像。通过机器视觉的非破坏性测试,在噪声图像上的小焊接缺陷的检测非常困难。在噪声图像的特征空间中存在高梯度幅度和低强度是焊接缺陷的主要特征。可以考虑这些特性来细化和获得无噪声图像以检测焊接缺陷。该研究提出了修改的各向异性扩散模型,其认为灰度级的局部概率值和扩散系数函数中的自适应阈值参数,以调整特征空间与噪声图像的低边缘梯度的含义。此外,已经引入了基于熵的停止标准来终止扩散过程。将该提出的模型与现有模型进行比较,其性能通过均方误差(MSE),信噪比(SNR),峰值信噪比(PSNR),熵(E)和平均值来评估其性能。结构相似性(MSSIM)措施。实验结果证实了所提出的模型的可靠性。 (c)2017年Elsevier Inc.保留所有权利。

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