Graduate Program in Electrical and Computer Engineering (CPGEI), Federal University of Technology, Paraná (UTFPR), Curitiba PR 80230-901, Brazil.
Sensors (Basel). 2018 Nov 23;18(12):4097. doi: 10.3390/s18124097.
Model-based image reconstruction has improved contrast and spatial resolution in imaging applications such as magnetic resonance imaging and emission computed tomography. However, these methods have not succeeded in pulse-echo applications like ultrasound imaging due to the typical assumption of a finite grid of possible scatterer locations in a medium⁻an assumption that does not reflect the continuous nature of real world objects and creates a problem known as off-grid deviation. To cope with this problem, we present a method of dictionary expansion and constrained reconstruction that approximates the continuous manifold of all possible scatterer locations within a region of interest. The expanded dictionary is created using a highly coherent sampling of the region of interest, followed by a rank reduction procedure. We develop a greedy algorithm, based on the Orthogonal Matching Pursuit, that uses a correlation-based non-convex constraint set that allows for the division of the region of interest into cells of any size. To evaluate the performance of the method, we present results of two-dimensional ultrasound imaging with simulated data in a nondestructive testing application. Our method succeeds in the reconstructions of sparse images from noisy measurements, providing higher accuracy than previous approaches based on regular discrete models.
基于模型的图像重建在磁共振成像和发射计算机断层扫描等成像应用中提高了对比度和空间分辨率。然而,由于介质中可能散射体位置的有限网格的典型假设,这些方法并未在超声成像等脉冲回波应用中取得成功——这种假设不能反映真实世界物体的连续性质,并产生了所谓的离网格偏差问题。为了解决这个问题,我们提出了一种字典扩展和约束重建的方法,该方法可以近似感兴趣区域内所有可能散射体位置的连续流形。扩展字典是使用感兴趣区域的高度相干采样创建的,然后进行秩降低处理。我们开发了一种基于正交匹配追踪的贪婪算法,该算法使用基于相关的非凸约束集,允许将感兴趣区域划分为任意大小的单元。为了评估该方法的性能,我们在无损检测应用中使用模拟数据展示了二维超声成像的结果。我们的方法成功地从噪声测量中重建稀疏图像,提供了比基于正则离散模型的先前方法更高的准确性。