Abstract
In this Letter, we present a novel, to the best of our knowledge, line-wise scanning-based super-resolution (LSSR) imaging method. To reduce point spread functions overlapping among pixels, we specifically present a super-resolution (SR) imaging architecture to capture a series of low-resolution images using a line-based optical multiplexing technique, which is able to achieve a good balance between imaging quality and speed. In addition, we propose an efficient joint reconstruction algorithm based on total variation and low-rank constraints to generate a high-resolution image from these low-resolution images that contain different spatial details. Meanwhile, existing stripe noises are efficiently suppressed. Experiments on real data show that LSSR imaging has significant advantages over other state-of-the-art methods in terms of visual quality and quantitative measurement.
© 2022 Optica Publishing Group
Full Article | PDF ArticleMore Like This
Xuheng Cao, Yusheng Lian, Zilong Liu, Han Zhou, Xiangmei Hu, Beiqing Huang, and Wan Zhang
Opt. Lett. 47(14) 3431-3434 (2022)
Haihang Ruan, Zhiyong Tan, Liangtao Chen, Wenjain Wan, and Juncheng Cao
Opt. Lett. 47(12) 3115-3118 (2022)
Xuheng Cao, Yusheng Lian, Zilong Liu, Han Zhou, Bin Wang, Wan Zhang, and Beiqing Huang
Opt. Lett. 47(19) 5184-5187 (2022)