Feature Adaptive Wavelet Shrinkage for Image Denoising

K. K. Gupta, R. Gupta
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引用次数: 20

Abstract

In this paper, a new wavelet shrinkage denoising algorithm is presented. The algorithm uses wavelet transform (WT) to extract information about sharp variation in multiresolution images and applies shrinkage function adapting the image features. The shrinkage function depends on energy of neighboring pixels, whereas in standard wavelet methods, the empirical wavelet coefficients shrink pixel by pixel, on the basis of their individual magnitude. Experiments show that wavelet shrinkage algorithm which uses neighboring pixels energy improves the denoising performance and achieves better peak signal to noise ratio compared to other thresholding algorithms. Due to its low complexity, the proposed algorithm is very suitable for hardware implementation
特征自适应小波收缩图像去噪
提出了一种新的小波收缩去噪算法。该算法利用小波变换提取多分辨率图像的急剧变化信息,并应用适应图像特征的收缩函数。收缩函数取决于相邻像素的能量,而在标准小波方法中,经验小波系数根据其单个大小逐像素收缩。实验表明,利用相邻像素能量的小波收缩算法提高了去噪性能,比其他阈值算法获得了更好的峰值信噪比。该算法具有较低的复杂度,非常适合硬件实现
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