基于平稳小波域遗传算法的台风云图增强与消斑

C. J. Zhang, X. D. Wang
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引用次数: 17

摘要

采用离散平稳小波变换(SWT)、广义交叉验证(GCV)、遗传算法(GA)和非线性增益算子,提出了一种高效的台风云图去噪增强算法。在对台风云图进行SWT处理后,利用GA和GCV在精细分辨率下对平稳小波系数进行修正,降低了台风云图中的噪声。在不知道噪声方差的情况下,仅利用已知的输入图像数据即可得到渐近最优去噪阈值。采用遗传算法和非线性增益算子在粗分辨率下对平稳小波系数进行修正,增强台风云图的细节。实验结果表明,该算法能有效地去除台风云图中的斑点,并能很好地增强图像的细节。为了准确评价增强台风云图的质量,提出了基于信息熵、对比度和峰值信噪比的综合评分指标。最后,将该算法与基于离散小波变换的其他类似方法进行了比较。
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Typhoon cloud image enhancement and reducing speckle with genetic algorithm in stationary wavelet domain
By employing discrete stationary wavelet transform (SWT), generalised cross-validation (GCV), genetic algorithm (GA), and non-linear gain operator, an efficient de-noising and enhancement algorithm for typhoon cloud image is proposed. Having implemented SWT to a typhoon cloud image, noise in a typhoon cloud image is reduced by modifying the stationary wavelet coefficients using GA and GCV at fine resolution levels. Asymptotical optimal de-noising threshold can be obtained, without knowing the variance of noise, by only employing the known input image data. GA and non-linear gain operator are used to modify the stationary wavelet coefficients at coarse resolution levels in order to enhance the details of a typhoon cloud image. Experimental results show that the proposed algorithm can efficiently reduce the speckle in a typhoon cloud image while well enhancing the detail. In order to accurately assess an enhanced typhoon cloud image's quality, an overall score index is proposed based on information entropy, contrast measure and peak signal-noise-ratio (PSNR). Finally, comparisons between the proposed algorithm and other similar methods, which are proposed based on discrete wavelet transform, are carried out.
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