Mammogram Image Superresolution Based on Statistical Moment Analysis

A. Wong, A. Mishra, David A Clausi, P. Fieguth
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引用次数: 2

Abstract

A novel super resolution method for enhancing the resolution of mammogram images based on statistical moment analysis (SMA) has been designed and implemented. The proposed SMA method enables high resolution mammogram images to be produced at lower levels of radiation exposure to the patient. The SMA method takes advantage of the statistical characteristics of the underlying breast tissues being imaged to produce high resolution mammogram images with enhanced fine tissue details such that the presence of masses and micro calcifications can be more easily identified. In the SMA method, the super resolution problem is formulated as a constrained optimization problem using an adaptive third-order Markov prior model, and solved efficiently using a conjugate gradient approach. The priors are adapted based on the inter-pixel likelihoods of the first moment about zero (mean), second central moment (variance), and third and fourth standardized moments (skewness and kurtosis) from the low resolution images. Experimental results demonstrate the effectiveness of the SMA method at enhancing fine tissue details when compared to existing resolution enhancement methods.
基于统计矩分析的乳房x线图像超分辨率
设计并实现了一种基于统计矩分析(SMA)的提高乳房x线图像分辨率的超分辨率方法。所提出的SMA方法能够在患者较低的辐射暴露水平下产生高分辨率乳房x线照片。SMA方法利用被成像乳腺组织的统计特征,生成高分辨率乳房x线照片,增强组织细节,从而更容易识别肿块和微钙化的存在。在SMA方法中,超分辨率问题采用自适应三阶马尔可夫先验模型将其表述为约束优化问题,并采用共轭梯度法高效求解。先验是基于来自低分辨率图像的第一矩(均值)、第二中心矩(方差)、第三和第四标准化矩(偏度和峰度)的像素间似然进行调整的。实验结果表明,与现有的分辨率增强方法相比,SMA方法在增强精细组织细节方面是有效的。
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