基于shearlet变换的噪声图像改进BPS算法

M. Nishanthi, J. J. Nayahi
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引用次数: 1

摘要

大多数医学和核图像都含有视觉噪声。由于噪声的存在,不能很好地检查图像。因此,有必要避免噪声,以提供更好的图像质量和更好的压缩效率,以实现高效的存储和传输。基于块的通道并行SPIHT (BPS)由于处理速度快而被广泛应用于压缩领域。可以将小波变换后的图像分解成4×4位块,分解后的块在所有位平面上同时编码,因此速度非常快。然而,主要的缺点是PSNR值和视觉质量的轻微下降。为了克服这一缺点,提出了一种改进的BPS算法,该算法用Shearlet代替小波,因为Shearlet可以提供多向信息,并且可以用于检测边缘等几何特征。变换前采用LLSURE技术去除图像中的噪声。它是首选的,因为它的高边缘保持能力。实验结果证明了LLSURE滤波器和shearlet变换在BPS算法中的有效性。结果表明,与其他噪声图像相比,PSNRvalue对于高斯噪声损坏的图像是非常有效的。
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Modified BPS algorithm based on shearlet transform for noisy images
Most of the medical and nuclear images contain visual noise. Due to the presence of noise, the images can't be examined properly. So, there is a necessity to avoid the noise in order to provide better quality images along with the better compression efficiency for efficient storage and transmission. Block Based Pass Parallel SPIHT (BPS) is widely used for compression because of its high processing speed. It is possible by decomposing the wavelet transformed image into 4×4 bit-blocks and the decomposed blocks are encoded simultaneously in all the bit planes hence the speed is very high. However, the major drawback is the slight degradation in the PSNR value and visual quality. To overcome this drawback, a modified BPS algorithm is proposed which replaces wavelet with Shearlet because shearlet provides multi directional information and it also used to detect the geometrical features like edges. LLSURE technique is appliedbefore transformation to remove the noise induced in the image. It is preferred because of its high edge preserving capability. Experimental results demonstrate the effectiveness of the LLSURE filter and the shearlet transform in the BPS algorithm. It shows that the PSNRvalue is very effective for images corrupted with Gaussian noise when compared to other noisy images.
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