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Coefficient Random Permutation Based Compressed Sensing for Medical Image Compression

机译:基于系数随机置换的医学图像压缩感知

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Compression of medical data remains challenging because of the loss in clarity of compressed images. In medical field, it is necessary to have high image quality in region of interest. This paper presents a Compressed Sensing (CS) method for the compression of medical images. Coefficient random permutation (CRP) based CS is used in this paper for compression of medical images. The different image block has different sparsity. If the nearby pixel values in a block have stronger correlation, then they are strongly sparse, otherwise they are said to be weakly sparse. The main objective of using this method is to provide high quality compressed images thereby maintaining a balanced sparsity of the reconstructed images. As a result performance gain would be high. Experimental results show that CRP based CS helps achieving better PSNR values even with lesser number of measurement values.
机译:由于压缩图像清晰度的损失,医疗数据的压缩仍然具有挑战性。在医学领域,需要在关注区域中具有高图像质量。本文提出了一种用于医学图像压缩的压缩感知(CS)方法。本文使用基于系数随机置换(CRP)的CS压缩医学图像。不同的图像块具有不同的稀疏性。如果块中附近的像素值具有更强的相关性,则它们是非常稀疏的,否则被称为弱稀疏的。使用此方法的主要目的是提供高质量的压缩图像,从而保持重建图像的稀疏平衡。结果,性能增益将很高。实验结果表明,即使使用较少的测量值,基于CRP的CS仍可帮助获得更好的PSNR值。

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