Electronic Systems Engineering Department, Escola Politécnica, Universidade de São Paulo, São Paulo, SP, Brazil.
IEEE Trans Image Process. 2011 Aug;20(8):2229-40. doi: 10.1109/TIP.2011.2118220. Epub 2011 Feb 22.
The classical approach for acoustic imaging consists of beamforming, and produces the source distribution of interest convolved with the array point spread function. This convolution smears the image of interest, significantly reducing its effective resolution. Deconvolution methods have been proposed to enhance acoustic images and have produced significant improvements. Other proposals involve covariance fitting techniques, which avoid deconvolution altogether. However, in their traditional presentation, these enhanced reconstruction methods have very high computational costs, mostly because they have no means of efficiently transforming back and forth between a hypothetical image and the measured data. In this paper, we propose the Kronecker Array Transform (KAT), a fast separable transform for array imaging applications. Under the assumption of a separable array, it enables the acceleration of imaging techniques by several orders of magnitude with respect to the fastest previously available methods, and enables the use of state-of-the-art regularized least-squares solvers. Using the KAT, one can reconstruct images with higher resolutions than was previously possible and use more accurate reconstruction techniques, opening new and exciting possibilities for acoustic imaging.
经典的声成像方法包括波束形成,并产生与阵列点扩散函数卷积的感兴趣的源分布。这种卷积会模糊感兴趣的图像,显著降低其有效分辨率。已经提出了去卷积方法来增强声图像,并取得了显著的改进。其他建议涉及协方差拟合技术,完全避免了去卷积。然而,在其传统表述中,这些增强的重建方法具有非常高的计算成本,主要是因为它们没有有效的方法在假设图像和测量数据之间来回转换。在本文中,我们提出了 Kronecker 阵列变换(KAT),这是一种用于阵列成像应用的快速可分离变换。在可分离阵列的假设下,它能够将成像技术的速度相对于以前最快的方法提高几个数量级,并能够使用最先进的正则化最小二乘求解器。使用 KAT,可以重建出比以前更高分辨率的图像,并使用更精确的重建技术,为声成像开辟了新的令人兴奋的可能性。