中国物理B ›› 2023, Vol. 32 ›› Issue (3): 38702-038702.doi: 10.1088/1674-1056/aca9c7
Ying Wang(王莹)1,2,3,4, Feng Qi(祁峰)2,3,4,5,†, Zi-Xu Zhang(张子旭)6, and Jin-Kuan Wang(汪晋宽)1
Ying Wang(王莹)1,2,3,4, Feng Qi(祁峰)2,3,4,5,†, Zi-Xu Zhang(张子旭)6, and Jin-Kuan Wang(汪晋宽)1
摘要: Terahertz (THz) imaging has drawn significant attention because THz wave has a unique capability to transient, ultra-wide spectrum and low photon energy. However, the low resolution has always been a problem due to its long wavelength, limiting their application of fields practical use. In this paper, we proposed a complex one-shot super-resolution (COSSR) framework based on a complex convolution neural network to restore superior THz images at 0.35 times wavelength by extracting features directly from a reference measured sample and groundtruth without the measured PSF. Compared with real convolution neural network-based approaches and complex zero-shot super-resolution (CZSSR), COSSR delivers at least 6.67, 0.003, and 6.96% superior higher imaging efficacy in terms of peak signal to noise ratio (PSNR), mean square error (MSE), and structural similarity index measure (SSIM), respectively, for the analyzed data. Additionally, the proposed method is experimentally demonstrated to have a good generalization and to perform well on measured data. The COSSR provides a new pathway for THz imaging super-resolution (SR) reconstruction below the diffraction limit.
中图分类号: