Jirík Radovan, Taxt Torfinn
Brno University of Technology, Department of Biomedical Engineering, Brno, Czech Republic.
IEEE Trans Ultrason Ferroelectr Freq Control. 2008 Oct;55(10):2140-53. doi: 10.1109/TUFFC.914.
A new approach to 2-D blind deconvolution of ultrasonic images in a Bayesian framework is presented. The radio-frequency image data are modeled as a convolution of the point-spread function and the tissue function, with additive white noise. The deconvolution algorithm is derived from statistical assumptions about the tissue function, the point-spread function, and the noise. It is solved as an iterative optimization problem. In each iteration, additional constraints are applied as a projection operator to further stabilize the process. The proposed method is an extension of the homomorphic deconvolution, which is used here only to compute the initial estimate of the point-spread function. Homomorphic deconvolution is based on the assumption that the point-spread function and the tissue function lie in different bands of the cepstrum domain, which is not completely true. This limiting constraint is relaxed in the subsequent iterative deconvolution. The deconvolution is applied globally to the complete radiofrequency image data. Thus, only the global part of the point-spread function is considered. This approach, together with the need for only a few iterations, makes the deconvolution potentially useful for real-time applications. Tests on phantom and clinical images have shown that the deconvolution gives stable results of clearly higher spatial resolution and better defined tissue structures than in the input images and than the results of the homomorphic deconvolution alone.
提出了一种在贝叶斯框架下对超声图像进行二维盲反卷积的新方法。射频图像数据被建模为点扩散函数和组织函数的卷积,并伴有加性白噪声。反卷积算法是从关于组织函数、点扩散函数和噪声的统计假设中推导出来的。它被作为一个迭代优化问题来求解。在每次迭代中,通过投影算子施加额外的约束以进一步稳定该过程。所提出的方法是同态反卷积的扩展,这里同态反卷积仅用于计算点扩散函数的初始估计。同态反卷积基于点扩散函数和组织函数位于倒谱域的不同频带这一假设,但这并不完全正确。在后续的迭代反卷积中放宽了这个限制约束。反卷积全局应用于完整的射频图像数据。因此,只考虑点扩散函数的全局部分。这种方法,再加上只需要几次迭代,使得反卷积对于实时应用可能是有用的。对体模和临床图像的测试表明,与输入图像以及仅同态反卷积的结果相比,反卷积给出了空间分辨率明显更高且组织结构定义更清晰的稳定结果。