1.8Image-denoising-master

所属分类:图形图像处理
开发工具:matlab
文件大小:1329KB
下载次数:2
上传日期:2020-07-05 22:24:17
上 传 者微笑UZI
说明:  图像滤波,中值滤波,自适应,对比结果,医学图像使用
(Image filtering, median filtering, adaptive, comparative results, medical image use)

文件列表:
Image denoising (0, 2017-07-23)
Image denoising\aerial.tiff (262278, 2017-07-23)
Image denoising\boat.tiff (262278, 2017-07-23)
Image denoising\bridge.tiff (262278, 2017-07-23)
Image denoising\calcsnr.m (412, 2017-07-23)
Image denoising\clock.tiff (65670, 2017-07-23)
Image denoising\couple.tiff (262278, 2017-07-23)
Image denoising\diamonds_gray.bmp (66616, 2017-07-23)
Image denoising\lena512.bmp (263222, 2017-07-23)
Image denoising\main.m (3227, 2017-07-23)
Image denoising\noise_detection.m (3727, 2017-07-23)
Image denoising\noise_detection_se.m (3512, 2017-07-23)
Image denoising\noise_remove.m (615, 2017-07-23)
Image denoising\weightedmed.m (1097, 2017-07-23)
RESULTS.pdf (346914, 2017-07-23)

# Image-denoising Image de-noising through symmetric, bell-shaped, and centered weighted median filters based subband decomposition This project presents a new method for removing combination of different type of noise from an image by using several median filter based subband decomposition. The benefit of sub-band decomposition using median transform over the wavelet decomposition method is that the nonlinear filters are not subject to Gibbs phenomenon which causes the ringing effects associated with the linear subband methods and they can be computed with low computational complexity. It has been experimentally observed that noisy coefficients have a higher value at the first scale of multiresolution analysis and later the value decreases in the subsequent scale and so on. So, I have proposed to apply subsequently decreasing threshold on every single step of the multiresolution coefficients so that the de-noising method filters out the noise while preserving good image quality. A number of noisy images contaminated with different combinations of the Gaussian, Speckle and Salt and pepper noises are denoised by this new approach and compared using SNR measure with other wavelet denoising algorithms. The experimental results validate that the proposed algorithm outperforms the traditional wavelet decomposition method for noise removal.

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