Acta Optica Sinica, Volume. 38, Issue 7, 0711001(2018)
Compressive Sensing Ghost Imaging Based on Neighbor Similarity
In order to improve the imaging quality of ghost imaging and solve the problem of high distortion factor under low sampling ratio, we propose a compressive sensing ghost imaging method based on neighbor similarity(NSGI). The neighbor similarity embodied in the correlation between image pixels contains abundant information regarding the spatial structure of the object. We analyze the principle of compressive sensing ghost imaging and use the neighbor similarity to evaluate undetected targets. According to the principle of greedy algorithm, we adopt the neighbor similarity to optimize the process of image reconstruction, and set up the threshold value of the correlation coefficient to reduce computation load and improve precision. The simulation and experimental results show that compared with the traditional ghost imaging, NSGI can obtain high-quality images based on a low sampling frequency, which will further facilitate the practical application of ghost imaging.
Get Citation
Copy Citation Text
Yi Chen, Xiang Fan, Yubao Cheng, Zhengdong Cheng, Zhenyu Liang. Compressive Sensing Ghost Imaging Based on Neighbor Similarity[J]. Acta Optica Sinica, 2018, 38(7): 0711001
Category: Imaging Systems
Received: Dec. 10, 2017
Accepted: --
Published Online: Sep. 5, 2018
The Author Email: Chen Yi (lishuichenyi@sina.com)