Photonics (Apr 2023)

Automatic Inhomogeneous Background Correction for Spatial Target Detection Image Based on Partition Processing

  • Chun Jiang,
  • Tao Chen,
  • Changzheng Lu,
  • Zhiyong Wu,
  • Changhua Liu,
  • Meng Shao,
  • Jingtai Cao

DOI
https://doi.org/10.3390/photonics10040433
Journal volume & issue
Vol. 10, no. 4
p. 433

Abstract

Read online

High-resolution imaging with wide field of view (FoV) ground-based telescopes is often affected by skylight background and noise due to the detector, resulting in an inhomogeneous background. In this paper, we propose an improved method for spatial image non-uniformity correction based on partition processing. First, an evaluation metric is introduced to evaluate the partition size and automatically iterate a suitable partition value for different scenarios based on the different operating conditions of the telescope. Then, we iteratively calculate the mean and variance in each partitioned region to extract the background of each partitioned region. Finally, after applying bilinear interpolation to the background extracted from each region, the inhomogeneous background is obtained and removed from the original image. The experiments on the simulated and real images show that the proposed method can effectively remove the inhomogeneous background of spatial images and meet the requirements of the real-time processing of high-resolution images under long exposure conditions.

Keywords