首页> 外文会议>Control and Automation, 2009. ICCA 2009 >Ultrasound image reconstruction by two-dimensional blind total variation deconvolution
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Ultrasound image reconstruction by two-dimensional blind total variation deconvolution

机译:二维盲总变化反褶积重建超声图像

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The main inherent property of medical ultrasound imaging is speckle noise which generally obscures and reduces the diagnostic image resolution and contrast. Consequently, the substantial improvement of ultrasound images is an important prerequisite, whenever ultrasound is used as one of the most utilized diagnostic modalities. The problem of reconstruction of ultrasound images by means of blind deconvolution has long been recognized as a prerequisite in ultrasound imaging processing in the recent decades. Recently, the total variation (TV) regularization method has become extremely effective approach for image reconstruction, especially for restoring edges of the blurring image. In this paper, we present a new blind iterative TV deconvolution algorithm for reconstructing ultrasound images from blurry and noisy observations. First, it proposes the initial estimation of the point-spread function (PSF) based on a generalization of two-dimensional homomorphic filtering in cepstrum domain. It is demonstrated that the initial PSF can be effectively estimated by applying a proper smoothing low-pass filtering in cepstrum domain. Second, it introduces a novel blind iterative TV deconvolution which is derived from an alternating minimization algorithm. Fast Fourier transform (FFT) is used in the pre-iteration computation. The innovative blind deconvolution is based on either concurrent or successive estimation of the PSF function and the image of interest. The iterative scheme is devised to recover the image and simultaneously identify the PSF function. The estimated PSF and restored image will be close to real values in the subsequent iterative deconvolution. Final, tests on phantom and clinical images have proven our novel blind iterative TV deconvolution gives more positive results of higher spatial resolution and better defined tissue structures than other deconvolution methods.
机译:医学超声成像的主要固有特性是散斑噪声,这通常会遮挡并降低诊断图像分辨率和对比度。因此,当超声用作最利用的诊断方式之一时,超声图像的显着改善是重要的前提。通过盲卷积重建超声图像的问题已经被认为是近几十年来超声成像处理的先决条件。最近,总变化(TV)正则化方法已经成为图像重建的极其有效的方法,特别是用于恢复模糊图像的边缘。在本文中,我们提出了一种新的盲迭代电视折叠算法,用于重建模糊和嘈杂观测的超声图像。首先,它提出了基于谱系统域中二维同态滤波的概括的点扩散函数(PSF)的初始估计。结果证明,可以通过在谱系统域中应用适当的平滑低通滤波来有效地估计初始PSF。其次,它介绍了一种新颖的盲迭代电视解构,其来自交替最小化算法。在预迭代计算中使用快速傅里叶变换(FFT)。创新的盲折叠卷积基于对PSF功能的并发或连续估计和感兴趣的图像。设计迭代方案恢复图像并同时识别PSF功能。估计的PSF和恢复图像将接近随后的迭代解卷积中的实际值。最终,对幻影和临床图像的测试证明我们的小说盲迭代电视折叠卷大提供更高的空间分辨率和更好的定义组织结构的积极结果,而不是其他去卷积方法。

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