一种自适应阈值联合多尺度图像去噪算法

Jin He, Yinpei Sun, Ying Luo, Qun Zhang
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引用次数: 6

摘要

曲波变换是近年来发展起来的一种多尺度变换,它可以很好地处理直线的奇异性,并为带有边缘的图像提供最优的稀疏表示。但目前基于曲线变换的图像去噪多采用蒙特卡罗阈值,没有有效地利用图像曲线系数的特征,无法达到最佳效果。同时,小波变换对均匀区域的编码优于曲线变换。本文提出了一种自适应蒙特卡罗阈值联合多尺度算法。该算法采用小波变换和快速离散曲线变换相结合的方法实现,并采用自适应蒙特卡罗阈值。实验结果表明,该方法有效地消除了高斯白噪声,提高了峰值信噪比(PSNR),更好地实现了保护图像细节与去噪之间的平衡。
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A Joint Multiscale Algorithm with Auto-adapted Threshold for Image Denoising
Curvelet transform is one of the recently developed multiscale transform, which can well deal with the singularity of line and provides optimally sparse representation of images with edges. But now the image denoising based on curvelet transform is almost used the Monte Carlo threshold, it is not used the feature of images’ curvelet coefficients effectively, so the best result can not be reached. Meanwhile, the wavelet transform codes homogeneous areas better than the curvelet transform. In this paper a joint multiscale algorithm with auto-adapted Monte Carlo threshold is proposed. This algorithm is implemented by combining the wavelet transform and the fast discrete curvelet transform, in which the auto-adapted Monte Carlo threshold is used. Experimental results show that this method eliminate white Gaussian noise effectively, improves Peak Signal to Noise Ratio (PSNR) and realizes the balance between protecting image details and wiping off noise better.
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