Lucas Heights Res. Labs., Australian Nucl. Sci. and Technol. Organ., Menai, NSW.
IEEE Trans Image Process. 1997;6(8):1139-47. doi: 10.1109/83.605411.
There are many practical problems in which it is required to detect and characterize hidden structures or remote objects by virtue of the scattered acoustic or electromagnetic fields they generate. It remains an open question, however, as to which reconstruction algorithms offer the most informative images for a given set of field measurements. Commonly used time-domain beamforming techniques, and their equivalent frequency-domain implementations, are conceptually simple and stable in the presence of noise, however, large proportions of missing measurements can quickly degrade the image quality. We apply a new algorithm based on the maximum entropy method (MEM) to the reconstruction of images from sparsely sampled coherent field data. The general principles and limitations of the new method are discussed in the framework of regularization theory, and the results of monostatic imaging experiments confirm that superior resolution and artifact suppression are obtained relative to a commonly used linear inverse filtering approach.
在许多实际问题中,需要通过它们产生的散射声或电磁场来检测和描述隐藏的结构或远程目标。然而,对于给定的场测量数据集,哪种重建算法能够提供最有信息量的图像,这仍然是一个悬而未决的问题。常用的时域波束形成技术及其等效的频域实现,在噪声存在的情况下概念上简单且稳定,但是大量缺失的测量值会迅速降低图像质量。我们将一种基于最大熵方法(MEM)的新算法应用于从稀疏采样相干场数据中重建图像。在正则化理论的框架内讨论了新方法的一般原理和局限性,单基地成像实验的结果证实,与常用的线性反滤波方法相比,分辨率和伪影抑制得到了提高。