An efficient de-noising algorithm for infrared image

Changjiang Zhang, Jinshan Wang, Xiaodong Wang
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引用次数: 6

Abstract

Employing discrete stationary wavelet transform (DSWT) and generalized cross validation (GCV), an efficient denoising algorithm for infrared image is proposed. Asymptotical optimal threshold can be obtained, without knowing the variance of noise, only employing the known input image data. Having implemented DSWT to an infrared image, additive Gauss white noise (AGWN), 1/f noise and multiplicative noise (MN) can be suppressed efficiently in the high frequency sub-bands of each decomposition level respectively. Experimental results show that the new algorithm can reduce efficiently the AGWN and 1/f noise in the infrared image while keeps the detail information of targets well. In performance index and visual quality, the new algorithm is more excellent than the de-noising algorithm based on discrete orthogonal wavelet transform (DOWT) and the conditional median value filter (MVF).
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一种有效的红外图像去噪算法
采用离散平稳小波变换(DSWT)和广义交叉验证(GCV),提出了一种有效的红外图像去噪算法。在不知道噪声方差的情况下,只使用已知的输入图像数据,即可得到渐近最优阈值。通过对红外图像进行DSWT处理,可以有效地抑制加性高斯白噪声(AGWN)、1/f噪声(MN)和乘性噪声(MN)。实验结果表明,该算法能有效地降低红外图像中的AGWN和1/f噪声,同时很好地保留了目标的细节信息。在性能指标和视觉质量方面,新算法优于基于离散正交小波变换(DOWT)和条件中值滤波(MVF)的去噪算法。
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