论文标题
通过近端拆分(横幅hypersara)在无线电干涉仪中平行的成像:I。算法和仿真
Parallel faceted imaging in radio interferometry via proximal splitting (Faceted HyperSARA): I. Algorithm and simulations
论文作者
论文摘要
即将到来的无线电干涉仪的目的是以新的分辨率和灵敏度级别为天空形象,宽带图像立方体靠近SKA的PBABYTE量表。现代近端优化算法显示,由于它们能够注入复杂的图像模型,可以使可见性数据形成图像形成的逆问题,从而显着胜过清洁的潜力。由于将数据分解为块,因此在大数据量上也表明它们在大数据量中是可行的,用于对目标函数中涉及的块特异性数据获取项的并行处理。在这项工作中,专注于强度成像,将分裂功能进一步利用,以将图像立方体分解为空间光谱方面,并在目标函数中实现平行处理特定于方面的正则化项,从而导致“ Facet hypersara”算法。根据噪声水平的估计值,还引入了可靠的启发式方法,从而实现了涉及目标的正则化参数的自动设置,从可见性域转移到应用正则化的域。基于MATLAB实施的仿真结果,涉及合成图像立方体和接近千兆字节尺寸的数据证实,与非面对方法相比,方面可以提供并行功能的重大增加(Hypersara)。
Upcoming radio interferometers are aiming to image the sky at new levels of resolution and sensitivity, with wide-band image cubes reaching close to the Petabyte scale for SKA. Modern proximal optimization algorithms have shown a potential to significantly outperform CLEAN thanks to their ability to inject complex image models to regularize the inverse problem for image formation from visibility data. They were also shown to be parallelizable over large data volumes thanks to a splitting functionality enabling the decomposition of the data into blocks, for parallel processing of block-specific data-fidelity terms involved in the objective function. Focusing on intensity imaging, the splitting functionality is further exploited in this work to decompose the image cube into spatio-spectral facets, and enable parallel processing of facet-specific regularization terms in the objective function, leading to the "Faceted HyperSARA" algorithm. Reliable heuristics enabling an automatic setting of the regularization parameters involved in the objective are also introduced, based on estimates of the noise level, transferred from the visibility domain to the domains where the regularization is applied. Simulation results based on a MATLAB implementation and involving synthetic image cubes and data close to Gigabyte size confirm that faceting can provide a major increase in parallelization capability when compared to the non-faceted approach (HyperSARA).