Michailovich Oleg, Tannenbaum Allen
Department of Electrical and Computer Engineering, University of Waterloo, Waterloo, ON N3L 3G1, Canada.
IEEE Trans Image Process. 2007 Dec;16(12):3005-19. doi: 10.1109/tip.2007.910179.
The problem of reconstruction of ultrasound images by means of blind deconvolution has long been recognized as one of the central problems in medical ultrasound imaging. In this paper, this problem is addressed via proposing a blind deconvolution method which is innovative in several ways. In particular, the method is based on parametric inverse filtering, whose parameters are optimized using two-stage processing. At the first stage, some partial information on the point spread function is recovered. Subsequently, this information is used to explicitly constrain the spectral shape of the inverse filter. From this perspective, the proposed methodology can be viewed as a "hybridization" of two standard strategies in blind deconvolution, which are based on either concurrent or successive estimation of the point spread function and the image of interest. Moreover, evidence is provided that the "hybrid" approach can outperform the standard ones in a number of important practical cases. Additionally, the present study introduces a different approach to parameterizing the inverse filter. Specifically, we propose to model the inverse transfer function as a member of a principal shift-invariant subspace. It is shown that such a parameterization results in considerably more stable reconstructions as compared to standard parameterization methods. Finally, it is shown how the inverse filters designed in this way can be used to deconvolve the images in a nonblind manner so as to further improve their quality. The usefulness and practicability of all the introduced innovations are proven in a series of both in silico and in vivo experiments. Finally, it is shown that the proposed deconvolutioh algorithms are capable of improving the resolution of ultrasound images by factors of 2.24 or 6.52 (as judged by the autocorrelation criterion) depending on the type of regularization method used.
长期以来,通过盲反卷积重建超声图像的问题一直被认为是医学超声成像中的核心问题之一。本文通过提出一种在多个方面具有创新性的盲反卷积方法来解决这一问题。具体而言,该方法基于参数化逆滤波,其参数通过两阶段处理进行优化。在第一阶段,恢复点扩散函数的一些部分信息。随后,利用这些信息明确约束逆滤波器的频谱形状。从这个角度来看,所提出的方法可以被视为盲反卷积中两种标准策略的“混合”,这两种策略分别基于点扩散函数和感兴趣图像的并发估计或相继估计。此外,有证据表明,在许多重要的实际情况下,“混合”方法的性能优于标准方法。此外,本研究引入了一种不同的逆滤波器参数化方法。具体来说,我们建议将逆传递函数建模为主移不变子空间的一个成员。结果表明,与标准参数化方法相比,这种参数化方法能带来更稳定的重建结果。最后,展示了以这种方式设计的逆滤波器如何用于非盲方式对图像进行反卷积,从而进一步提高图像质量。在一系列计算机模拟和体内实验中证明了所有引入创新的实用性和可行性。最后,结果表明,根据所使用的正则化方法类型,所提出的反卷积算法能够将超声图像的分辨率提高2.24倍或6.52倍(根据自相关标准判断)。