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Wavelet restoration of medical pulse-echo ultrasound images in an EM framework

机译:EM框架中医学脉冲回波超声图像的小波复原

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The clinical utility of pulse-echo ultrasound images is severely limited by inherent poor resolution that impacts negatively on their diagnostic potential. Research into the enhancement of image quality has mostly been concentrated in the areas of blind image restoration and speckle removal, with little regard for accurate modeling of the underlying tissue reflectivity that is imaged. The acoustic response of soft biological tissues has statistics that differ substantially from the natural images considered in mainstream image processing: although, on a macroscopic scale, the overall tissue echogenicity does behave somewhat like a natural image and varies piecewise-smoothly, on a microscopic scale, the tissue reflectivity exhibits a pseudo-random texture (manifested in the amplitude image as speckle) due to the dense concentrations of small, weakly scattering particles. Recognizing that this pseudo-random texture is diagnostically important for tissue identification, we propose modeling tissue reflectivity as the product of a piecewise-smooth echogenicity map and a field of uncorrelated, identically distributed random variables. We demonstrate how this model of tissue reflectivity can be exploited in an expectation-maximization (EM) algorithm that simultaneously solves the image restoration problem and the speckle removal problem by iteratively alternating between Wiener filtering (to solve for the tissue reflectivity) and wavelet-based denoising (to solve for the echogenicity map). Our simulation and in vitro results indicate that our EM algorithm is capable of producing restored images that have better image quality and greater fidelity to the true tissue reflectivity than other restoration techniques based on simpler regularizing constraints
机译:脉冲回波超声图像的临床效用受到固有的分辨率差的严重限制,分辨率差对其诊断潜力产生负面影响。增强图像质量的研究主要集中在盲图像恢复和斑点去除领域,很少考虑对所成像的基础组织反射率进行精确建模。软生物组织的声学响应具有与主流图像处理中所考虑的自然图像大不相同的统计数据:尽管在宏观尺度上,整个组织的回声性的确有点像自然图像,并且在微观尺度上呈分段平滑变化,由于小的弱散射颗粒的密集浓度,组织反射率显示出伪随机纹理(在振幅图像中表现为斑点)。认识到这种伪随机纹理对于组织识别在诊断上很重要,因此,我们建议将组织反射率建模为分段平滑的回声图和不相关且分布均匀的随机变量场的乘积。我们演示了如何在期望最大化(EM)算法中利用这种组织反射率模型,该算法通过迭代在维纳滤波(以解决组织反射率)和基于小波的方法之间交替地解决图像恢复问题和斑点去除问题去噪(解决回声图)。我们的仿真和体外结果表明,与其他基于简单正则约束的恢复技术相比,我们的EM算法能够生成具有更好图像质量和对真实组织反射率更高保真度的恢复图像。

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