Longfei Yin
Beijing University of Posts and Telecommunications
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Longfei Yin.
Chinese Science Bulletin | 2017
Junhui Li; Bin Luo; Dongyue Yang; Longfei Yin; Guohua Wu; Hong Guo
When using the image mutual information to assess the quality of reconstructed image in pseudo-thermal light ghost imaging, a negative exponential behavior with respect to the measurement number is observed. Based on information theory and a few simple and verifiable assumptions, semi-quantitative model of image mutual information under varying measurement numbers is established. It is the Gaussian characteristics of the bucket detector output probability distribution that leads to this negative exponential behavior. Designed experiments verify the model.
Optics Express | 2018
Bin Luo; Pengqi Yin; Longfei Yin; Guohua Wu; Hong Guo
Ghost imaging system requires a large number of samples to reconstruct the object. Computational ghost imaging can use well-designed pre-modulated orthogonal patterns to reduce the requirement of sampling number and increase the imaging quality, while the rotating ground glass (RGG) scheme cannot. Instead of the pre-modulation method, a post-processing method using Gram-Schmidt process to orthonormalize the patterns in a RGG scheme is introduced. Reconstructed ghost image after the Gram-Schmidt process (SGI) are tested using the quality indicators such as the Contrast-to-Noise (CNR), the Peak Signal to Noise Ratio (PSNR), the Correlation Coefficient (CC) and reducing the Mean Square Error (MSE). Simulation results show that this method has obvious advantage on enhancing the efficiency of image acquisition, and the sampling number requirement drops from several thousands to a few hundreds in ideal condition. However, in actual system with noise, the image quality from SGI declines in large sampling number, for noise and errors accumulate in the orthonormalization process. So an improved Group SGI method is then developed to avoid this error accumulation, which behaves effectively in reconstructing the image from experimental data and show good performances in large sampling number too. Since this method do not change the relationship between the reference patterns and the bucket values, it can easily combine with most of reconstruction algorithms and improve their reconstruction efficiency.
Optics Letters | 2017
Junhui Li; Dongyue Yang; Bin Luo; Guohua Wu; Longfei Yin; Hong Guo
When the sampling data of ghost imaging is recorded with less bits, i.e., experiencing quantization, decline of image quality is observed. The less bits used, the worse image one gets. Dithering, which adds suitable random noise to the raw data before quantization, is proved to be capable of compensating image quality decline effectively, even for the extreme binary sampling case. A brief explanation and parameter optimization of dithering are given.When the sampling data of ghost imaging are recorded with less bits, i.e., experiencing quantization, a decline in image quality is observed. The fewer bits that are used, the worse the image one gets. Dithering, which adds suitable random noise to the raw data before quantization, is proved to be capable of compensating image quality decline effectively, even for the extreme binary sampling case. A brief explanation and parameter optimization of dithering are given.
arXiv: Optics | 2016
Junhui Li; Hong Guo; Guohua Wu; Bin Luo; Dongyue Yang; Longfei Yin
arXiv: Optics | 2016
Junhui Li; Bin Luo; Dongyue Yang; Guohua Wu; Longfei Yin; Hong Guo
Optics Communications | 2018
Bin Luo; Guohua Wu; Longfei Yin; Zhicheng Gui; Yuehan Tian
Imaging and Applied Optics 2018 (3D, AO, AIO, COSI, DH, IS, LACSEA, LS&C, MATH, pcAOP) | 2018
Dongyue Yang; Junhui Li; Guohua Wu; Bin Luo; Longfei Yin; Hong Guo
Imaging and Applied Optics 2018 (3D, AO, AIO, COSI, DH, IS, LACSEA, LS&C, MATH, pcAOP) | 2018
Pengqi Yin; Longfei Yin; Bin Luo; Guohua Wu; Hong Guo
IEEE Photonics Technology Letters | 2018
Bin Luo; Longfei Yin; Junyu Xiong; Jingbiao Chen; Hong Guo
IEEE Photonics Technology Letters | 2018
Junyu Xiong; Bin Luo; Longfei Yin; Jingbiao Chen; Hong Guo