Optimum Color and Contrast Enhancement for Online Ferrography Image Restoration

Lingfeng Yang, Tonghai Wu, Kunpeng Wang, Hongkun Wu, N. Kwok
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引用次数: 1

Abstract

Online ferrography, because of its nondestructive and real-time capability, has been increasingly applied in monitoring machine wear states. However, online ferrography images are usually degraded as a result of undesirable image acquisition conditions, which eventually lead to inaccurate identifications. A restoration method focusing on color correction and contrast enhancement is developed to provide high-quality images for subsequent processing. Based on the formation of a degraded image, a model describing the degradation is constructed. Then, cost functions consisting of colorfulness, contrast, and information loss are formulated. An optimal restored image is obtained by minimizing the cost functions, in which parameters are properly determined using the Lagrange multiplier. Experiments are carried out on a collection of online ferrography images, and results show that the proposed method can effectively improve the image both qualitatively and quantitatively.
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在线铁谱图像恢复的最佳颜色和对比度增强
在线铁谱以其无损、实时的特点,越来越多地应用于机械磨损监测中。然而,由于不理想的图像采集条件,在线铁谱图像通常会降级,最终导致不准确的识别。为了为后续处理提供高质量的图像,提出了一种以色彩校正和对比度增强为重点的恢复方法。在退化图像形成的基础上,构造了描述退化的模型。然后,建立了由色彩、对比度和信息损失组成的成本函数。利用拉格朗日乘法器合理确定参数,通过最小化代价函数得到最优恢复图像。在一组在线铁谱图像上进行了实验,结果表明,该方法可以有效地提高图像的定性和定量。
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来源期刊
CiteScore
3.80
自引率
9.10%
发文量
25
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