Statistical modelling of wavelet coefficients of CT scan image

B. Kumar, S.P. Singh, A. Mohan, A. Anand, H. Singh
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引用次数: 4

Abstract

Prior knowledge of wavelet coefficient statistics is a key issue in the development of better quantization strategy for enhancing compression efficiency of digital images. Since statistics of medical images are quite different from those of natural images, there is a need for statistical modelling of wavelet coefficients in different subbands. This paper examines the suitability of Student-t, Pareto Weibull and Gaussian distributions for modelling the wavelet coefficients of various subbands in a CT scan image to improve the compression efficiency. It has been found that the statistics of wavelet coefficients in the CT scan images can be better approximated by the generalized Student-t distribution for negative wavelet coefficients whereas generalized Pareto distribution provides better fit for the non-negative coefficients. The results can be potentially useful in designing adaptive quantizer for achieving improved compression gain and reducing computational complexity for medical image coders.
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CT扫描图像小波系数的统计建模
小波系数统计的先验知识是制定更好的量化策略以提高数字图像压缩效率的关键。由于医学图像的统计与自然图像的统计有很大的不同,因此需要对不同子带的小波系数进行统计建模。本文研究了学生t分布、帕累托威布尔分布和高斯分布对CT扫描图像中各个子带的小波系数建模的适用性,以提高压缩效率。研究发现,对于负小波系数,广义Student-t分布能较好地逼近小波系数的统计量,而对于非负系数,广义Pareto分布能较好地拟合。该结果可用于设计自适应量化器,以实现改进的压缩增益和降低医学图像编码器的计算复杂度。
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