结合深度学习和单像素成像的快速高分辨率成像

X. Liu, Zilong Li, Jiaqing Dong, Guijun Wang, Wenhua Zhong, Qiegen Liu, Xianlin Song
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引用次数: 0

摘要

在传统的傅立叶单像素成像(FSPI)中,通常采用压缩采样来提高采集速度。然而,压缩采样后的重建图像往往分辨率较低,质量难以满足实际应用的成像要求。为了解决这一问题,我们提出了一种将深度学习和单像素成像相结合的新型成像方法,该方法仅用小范围采样就可以重建高分辨率图像。在网络的训练阶段,我们尝试将FSPI的物理过程融入到训练过程中。为了实现这一目标,选取大量的自然图像进行傅立叶单像素压缩采样和重构模拟。随后将压缩后的重构样本用于网络训练。在网络的测试阶段,将测试数据集的压缩重构样本输入到网络中进行优化。实验结果表明,与传统的压缩重建方法相比,该方法有效地提高了重建图像的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast high-resolution imaging combining deep learning and single-pixel imaging
In the traditional Fourier single-pixel imaging (FSPI), compressed sampling is often used to improve the acquisition speed. However, the reconstructed image after compressed sampling often has a lower resolution and the quality is difficult to meet the imaging requirements of practical applications. To address this issue, we proposed a novel imaging method that combines deep learning and single-pixel imaging, which can reconstruct high-resolution images with only a small-scale sampling. In the training phase of the network, we attempted to incorporate the physical process of FSPI into the training process. To achieve this objective, a large number of natural images were selected to simulate Fourier single-pixel compressed sampling and reconstruction. The compressed reconstructed samples were subsequently employed for network training. In the testing phase of the network, the compressed reconstruction samples of the test dataset were input into the network for optimization. The experimental results showed that compared with traditional compressed reconstruction methods, this method effectively improved the quality of reconstructed images.
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