• Optics and Precision Engineering
  • Vol. 30, Issue 19, 2370 (2022)
Yinbo ZHANG1, Haoyang LI1, Jianfeng SUN1,*, Sining LI1..., Peng JIANG2,*, Yue HOU1 and Hailong ZHANG1|Show fewer author(s)
Author Affiliations
  • 1National Key Laboratory of Science and Technology on Tunable Laser, Institute of Opto-Electronic, Harbin Institute of Technology, Harbin5000, China
  • 2Science and Technology on Complex System Control and Intelligent Agent Cooperation Laboratory, Beijing100074, China
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    DOI: 10.37188/OPE.20223019.2370 Cite this Article
    Yinbo ZHANG, Haoyang LI, Jianfeng SUN, Sining LI, Peng JIANG, Yue HOU, Hailong ZHANG. Imaging algorithm of dual-parameter estimation through smoke using Gm-APD lidar[J]. Optics and Precision Engineering, 2022, 30(19): 2370 Copy Citation Text show less

    Abstract

    When Geiger mode avalanche photo diode (Gm-APD) lidar is used to image targets obscured by dense smoke, the strong backscattering and absorption of laser light by the smoke severely limit the ability of traditional algorithms in extracting the target signal hidden in the smoke signal. To this end, we propose a Gm-APD lidar imaging algorithm based on dual-parameter estimation for imaging in smoke environments. First, this paper introduces a trigger model based on Gm-APD lidar and describes the principle for solving the actual received echo signal based on the detection probability. In addition, based on the collision theory of photons and smoke particles, as well as the Mie scattering theory, the physical relationship between the two parameters of the gamma model is derived. Second, a dual-parameter estimation algorithm is proposed based on the derived relationship, which considers approaches to accurately estimate μ and k. Finally, simulation and indoor experiments are conducted. The correctness of the relationship between μ and k is verified based on these simulation experiments, and the imaging ability of the proposed algorithm in the presence of smoke is verified through indoor experiments. The experimental results reveal that compared with traditional algorithms, the target recovery of the image reconstructed by the proposed algorithm increases by 73%, and the structural similarity increases by 0.228 9. Thus, this study effectively improves the target perception ability of Gm-APD lidar in smoke environments.
    Yinbo ZHANG, Haoyang LI, Jianfeng SUN, Sining LI, Peng JIANG, Yue HOU, Hailong ZHANG. Imaging algorithm of dual-parameter estimation through smoke using Gm-APD lidar[J]. Optics and Precision Engineering, 2022, 30(19): 2370
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