Sanders Toby, Gelb Anne, Platte Rodrigo B, Arslan Ilke, Landskron Kai
School of Mathematical and Statistical Sciences, Arizona State University, United States.
Department of Mathematics, Dartmouth College, United States.
Ultramicroscopy. 2017 Mar;174:97-105. doi: 10.1016/j.ultramic.2016.12.020. Epub 2017 Jan 3.
Over the last decade or so, reconstruction methods using ℓ regularization, often categorized as compressed sensing (CS) algorithms, have significantly improved the capabilities of high fidelity imaging in electron tomography. The most popular ℓ regularization approach within electron tomography has been total variation (TV) regularization. In addition to reducing unwanted noise, TV regularization encourages a piecewise constant solution with sparse boundary regions. In this paper we propose an alternative ℓ regularization approach for electron tomography based on higher order total variation (HOTV). Like TV, the HOTV approach promotes solutions with sparse boundary regions. In smooth regions however, the solution is not limited to piecewise constant behavior. We demonstrate that this allows for more accurate reconstruction of a broader class of images - even those for which TV was designed for - particularly when dealing with pragmatic tomographic sampling patterns and very fine image features. We develop results for an electron tomography data set as well as a phantom example, and we also make comparisons with discrete tomography approaches.
在过去十年左右的时间里,使用ℓ正则化的重建方法(通常归类为压缩感知(CS)算法)显著提高了电子断层扫描中高保真成像的能力。电子断层扫描中最流行的ℓ正则化方法是总变差(TV)正则化。除了减少不必要的噪声外,TV正则化还鼓励具有稀疏边界区域的分段常数解。在本文中,我们提出了一种基于高阶总变差(HOTV)的电子断层扫描的替代ℓ正则化方法。与TV一样,HOTV方法促进具有稀疏边界区域的解。然而,在平滑区域中,解不限于分段常数行为。我们证明,这允许更准确地重建更广泛的图像类别——甚至包括那些TV所设计用于的图像——特别是在处理实际的断层扫描采样模式和非常精细的图像特征时。我们针对一个电子断层扫描数据集以及一个模型示例得出了结果,并且我们还与离散断层扫描方法进行了比较。