Shevkunov Igor, Katkovnik Vladimir, Petrov Nikolay V, Egiazarian Karen
Department of Signal Processing, Tampere University of Technology, Finland.
Department of Photonics and Optical Information Technology, ITMO University, St. Petersburg, Russia.
Biomed Opt Express. 2018 Oct 17;9(11):5511-5523. doi: 10.1364/BOE.9.005511. eCollection 2018 Nov 1.
The paper is devoted to a computational super-resolution microscopy. A complex-valued wavefront of a transparent biological cellular specimen is restored from multiple intensity diffraction patterns registered with noise. For this problem, the recently developed lensless super-resolution phase retrieval algorithm [Optica, 4(7), 786 (2017)] is modified and tuned. This algorithm is based on a random phase coding of the wavefront and on a sparse complex-domain approximation of the specimen. It is demonstrated in experiments, that the reliable phase and amplitude imaging of the specimen is achieved for the low signal-to-noise ratio provided a low dynamic range of observations. The filterings in the observation domain and specimen variables are specific features of the applied algorithm. If these filterings are omitted the algorithm becomes a super-resolution version of the standard iterative phase retrieval algorithms. In comparison with this simplified algorithm with no filterings, our algorithm shows a valuable improvement in imaging with much smaller number of observations and shorter exposure time. In this way, presented algorithm demonstrates ability to work in a low radiation photon-limited mode.
本文致力于计算超分辨率显微镜技术。从带有噪声的多个强度衍射图样中恢复透明生物细胞样本的复值波前。针对此问题,对最近开发的无透镜超分辨率相位恢复算法[《Optica》,4(7),786(2017)]进行了修改和调整。该算法基于波前的随机相位编码以及样本的稀疏复域近似。实验表明,在观测动态范围较低的情况下,对于低信噪比能实现样本可靠的相位和幅度成像。观测域和样本变量中的滤波是所应用算法的特定特征。如果省略这些滤波,该算法就成为标准迭代相位恢复算法的超分辨率版本。与这种无滤波的简化算法相比,我们的算法在使用少得多的观测次数和更短曝光时间的成像方面显示出有价值的改进。通过这种方式,所提出的算法展示了在低辐射光子限制模式下工作的能力。