Sparse representation of medical images via compressed sensing using Gaussian Scale Mixtures

G. Tzagkarakis, P. Tsakalides
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引用次数: 2

Abstract

The increased high-resolution capabilities of modern medical image acquisition systems raise the crucial tasks of effectively storing and interacting with large databases of such data. The ease of image storage and query would be unfeasible without compression, which represents high-resolution images with a relatively small set of significant transform coefficients. Due to the specific content of medical images, compression often results in highly sparse representations in appropriate orthonormal bases. The inherent property of compressed sensing (CS) working simultaneously as a sensing and compression protocol using a small subset of random projection coefficients, enables a potentially significant reduction in storage requirements. In this paper, we introduce a Bayesian CS approach for obtaining highly sparse representations of medical images based on a set of noisy CS measurements, where the prior belief that the vector of transform coefficients should be sparse is exploited by modeling its probability distribution by means of a Gaussian Scale Mixture. The experimental results show that the proposed approach maintains the reconstruction performance of other state-of-the-art CS methods while achieving significantly sparser representations of medical images with distinct content.
基于高斯尺度混合压缩感知的医学图像稀疏表示
现代医学图像采集系统的高分辨率能力提高了有效存储和与此类数据的大型数据库交互的关键任务。如果没有压缩,图像存储和查询的便利性将是不可行的,压缩表示具有相对较小的重要变换系数集的高分辨率图像。由于医学图像的特定内容,压缩通常会在适当的正交基中产生高度稀疏的表示。压缩感知(CS)的固有特性是使用一小部分随机投影系数同时作为感知和压缩协议,从而可以显著降低存储需求。在本文中,我们引入了一种基于一组噪声CS测量值的贝叶斯CS方法来获得医学图像的高度稀疏表示,其中,通过使用高斯尺度混合模型来建模其概率分布,利用了变换系数向量应该是稀疏的先验信念。实验结果表明,该方法保持了其他最先进的CS方法的重建性能,同时实现了具有不同内容的医学图像的显着稀疏表示。
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