4.6 Article

LiDAR Echo Gaussian Decomposition Algorithm for FPGA Implementation

Journal

SENSORS
Volume 22, Issue 12, Pages -

Publisher

MDPI
DOI: 10.3390/s22124628

Keywords

LiDAR; echo processing algorithm; Gaussian decomposition; FPGA

Funding

  1. National Natural Science of China [41961065]
  2. Guangxi Innovative Development Grand Program [Guike AD19254002, GuikeAA18118038]
  3. Guangxi Natural Science Foundation for Innovation Research Team [2019GXNSFGA245001]
  4. Guilin Research and Development Plan Program [201902102]
  5. BaGuiScholars Program of Guangxi

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This paper presents an FPGA-based improved Gaussian full-waveform decomposition method, which achieves processing accuracy comparable to PC-based processing and is 292 times faster in processing speed.
As the existing processing algorithms for LiDAR echo decomposition are time-consuming, this paper proposes an FPGA-based improved Gaussian full-waveform decomposition method. The proposed FPGA architecture consists of three modules: (i) a pre-processing module, which is used to pipeline data reading and Gaussian filtering, (ii) the inflection point coordinate solution module, applied to the second-order differential operation and to calculate inflection point coordinates, and (iii) the Gaussian component parameter solution and echo component positioning module, which is utilized to calculate the Gaussian component and echo time parameters. Finally, two LiDAR datasets, covering the Congo and Antarctic regions, are used to verify the accuracy and speed of the proposed method. The experimental results show that (i) the accuracy of the FPGA-based processing is equivalent to that of PC-based processing, and (ii) the processing speed of the FPGA-based processing is 292 times faster than that of PC-based processing.

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