首页|Dual-parameter estimation algorithm for Gm-APD Lidar depth imaging through smoke

Dual-parameter estimation algorithm for Gm-APD Lidar depth imaging through smoke

扫码查看
? 2022 Elsevier LtdThe strong backscattering of smoke limits the adaptability of Gm-APD Lidar for depth imaging through dense smoke. In this paper, a dual-parameter estimation algorithm based on Gamma function is proposed. Aiming at the characteristics of small number of Bins and large Bin width, this algorithm uses continuous wavelet transform to extract scale parameter and maximum likelihood method to extract shape parameter. Based on the estimated two parameters, this study helps to distinguish between background photons reflected from the smoke and target signal photons. The experimental results show that when the smoke density is high or the acquisition time is 0.15 s, the reconstructed object shape is more complete. The distance error of short-range (30 cm) and long-range (75 cm) targets is 1 and 0 Bin respectively, which is at least 6 Bins less than the traditional algorithms. Our algorithm improves the weather adaptability of Gm-APD Lidar.

Depth imaging through smokeDual-parameter estimationGamma distributionGm-APD Lidar

Li S.、Sun J.、Liu D.、Zhang X.、Yang X.、Zhou X.、Zhang Y.

展开 >

National Key Laboratory of Science and Technology on Tunable Laser Institute of Opto-Electronic Harbin Institute of Technology

2022

Measurement

Measurement

SCI
ISSN:0263-2241
年,卷(期):2022.196
  • 4
  • 27