IEEE Trans Med Imaging. 2013 Nov;32(11):2034-49. doi: 10.1109/TMI.2013.2271904. Epub 2013 Jul 3.
In this paper, we present a novel technique, based on compressive sensing principles, for reconstruction and enhancement of multi-dimensional image data. Our method is a major improvement and generalization of the multi-scale sparsity based tomographic denoising (MSBTD) algorithm we recently introduced for reducing speckle noise. Our new technique exhibits several advantages over MSBTD, including its capability to simultaneously reduce noise and interpolate missing data. Unlike MSBTD, our new method does not require an a priori high-quality image from the target imaging subject and thus offers the potential to shorten clinical imaging sessions. This novel image restoration method, which we termed sparsity based simultaneous denoising and interpolation (SBSDI), utilizes sparse representation dictionaries constructed from previously collected datasets. We tested the SBSDI algorithm on retinal spectral domain optical coherence tomography images captured in the clinic. Experiments showed that the SBSDI algorithm qualitatively and quantitatively outperforms other state-of-the-art methods.
在本文中,我们提出了一种新颖的技术,基于压缩感知原理,用于重建和增强多维图像数据。我们的方法是对最近引入的用于减少散斑噪声的基于多尺度稀疏的层析去噪(MSBTD)算法的重大改进和推广。与 MSBTD 相比,我们的新技术具有几个优势,包括同时减少噪声和插补缺失数据的能力。与 MSBTD 不同,我们的新方法不需要目标成像对象的先验高质量图像,因此有可能缩短临床成像过程。我们将这种新颖的图像恢复方法称为基于稀疏的同时去噪和插值(SBSDI),它利用从先前收集的数据集构建的稀疏表示字典。我们在临床采集的视网膜谱域光学相干断层扫描图像上测试了 SBSDI 算法。实验表明,SBSDI 算法在质量和数量上都优于其他最先进的方法。