Hoshi Ikuo, Shimobaba Tomoyoshi, Kakue Takashi, Ito Tomoyoshi
Opt Express. 2020 Nov 9;28(23):34069-34078. doi: 10.1364/OE.410191.
Single-pixel imaging allows for high-speed imaging, miniaturization of optical systems, and imaging over a broad wavelength range, which is difficult by conventional imaging sensors, such as pixel arrays. However, a challenge in single-pixel imaging is low image quality in the presence of undersampling. Deep learning is an effective method for solving this challenge; however, a large amount of memory is required for the internal parameters. In this study, we propose single-pixel imaging based on a recurrent neural network. The proposed approach succeeds in reducing the internal parameters, reconstructing images with higher quality, and showing robustness to noise.
单像素成像可实现高速成像、光学系统小型化以及在宽波长范围内成像,而这对于传统成像传感器(如像素阵列)来说是困难的。然而,单像素成像面临的一个挑战是在欠采样情况下图像质量较低。深度学习是解决这一挑战的有效方法;然而,其内部参数需要大量内存。在本研究中,我们提出了基于循环神经网络的单像素成像方法。所提出的方法成功地减少了内部参数,重建出更高质量的图像,并表现出对噪声的鲁棒性。