Jiang Pengfei, Liu Jianlong, Wu Long, Xu Lu, Hu Jiemin, Zhang Jianlong, Zhang Yong, Yang Xu
Opt Express. 2022 May 23;30(11):18638-18654. doi: 10.1364/OE.457551.
There exists the contradiction between imaging efficiency and imaging quality for Fourier single-pixel imaging (FSI). Although the deep learning approaches have solved this problem to some extent, the reconstruction quality at low sampling rate is still not enough to meet the practical requirements. To solve this problem, inspired by the idea of super-resolution, this paper proposes the paralleled fusing of the U-net and attention mechanism to improve the quality of FSI reconstruction at a low sampling rate. This paper builds a generative adversarial network structure to achieve recovery of high-resolution target images from low-resolution FSI reconstruction results under low sampling rate conditions. Compared with conventional FSI and other deep learning methods based on FSI, the proposed method can get better quality and higher resolution results at low sampling rates in simulation and experiments. This approach is particularly important to high-speed Fourier single pixel imaging applications.
傅里叶单像素成像(FSI)存在成像效率与成像质量之间的矛盾。尽管深度学习方法在一定程度上解决了这个问题,但低采样率下的重建质量仍不足以满足实际需求。为了解决这个问题,受超分辨率思想的启发,本文提出将U-net与注意力机制并行融合,以提高低采样率下FSI重建的质量。本文构建了一种生成对抗网络结构,以在低采样率条件下从低分辨率FSI重建结果中恢复高分辨率目标图像。与传统FSI和其他基于FSI的深度学习方法相比,所提方法在模拟和实验中能在低采样率下获得质量更好、分辨率更高的结果。这种方法对高速傅里叶单像素成像应用尤为重要。