Visually Lossless Compression of Retina Images

S. Krivenko, V. Lukin, O. Krylova, V. Shutko
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引用次数: 8

Abstract

Digital images of a rather high resolution are widely used in modern medical practice. Due to their large size, there exists necessity to compress them before storage or transmission via communication lines in telemedicine. Possibilities of lossless compression are limited and one often has to apply lossy compression with providing acceptable diagnostic quality of compressed data (with ensuring visually lossless compression). This paper proposes ways to carry out such a compression in one iteration, i.e. quickly enough with application to retina images. An efficient coder based on discrete cosine transform (DCT) in 32×32 pixels blocks is analyzed. It is shown that mean squared error (MSE, or PSNR (peak signal to noise ratio) of introduced distortions can be predicted by estimating distribution of alternating current (AC) DCT coefficients in a limited number of 8×8 pixel blocks and very fast processing of these DCT coefficients. We present approximating (predicting) curves obtained by regression of several types of simple functions into scatter-plots. This allows setting coder parameter (quantization step - QS) to provide a desired MSE. Applicability of the proposed way of prediction approach is demonstrated experimentally for real-life retina images.
视网膜图像的视觉无损压缩
高分辨率的数字图像在现代医学实践中得到了广泛的应用。由于其体积较大,在远程医疗中存储或通过通信线路传输之前需要对其进行压缩。无损压缩的可能性是有限的,通常必须在提供可接受的压缩数据诊断质量(确保视觉上的无损压缩)的情况下应用有损压缩。本文提出了在一次迭代中执行这种压缩的方法,即在应用于视网膜图像时足够快。分析了一种基于32×32像素块离散余弦变换(DCT)的高效编码器。结果表明,通过估计有限数量8×8像素块中交流(AC) DCT系数的分布以及对这些DCT系数的快速处理,可以预测引入畸变的均方误差(MSE)或峰值信噪比(PSNR)。我们提出了几种简单函数回归到散点图的近似(预测)曲线。这允许设置编码器参数(量化步长- QS)以提供所需的MSE。本文提出的预测方法在实际视网膜图像中的适用性得到了实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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