AIP Advances (Nov 2022)

Background-independent evaluation model for infrared jamming effectiveness of false targets

  • Yongjia Qiu,
  • Hua Yang,
  • Dapeng Zhao,
  • Zhengdong Cheng,
  • Bin Zhu,
  • Qinyu Zhang

DOI
https://doi.org/10.1063/5.0120469
Journal volume & issue
Vol. 12, no. 11
pp. 115102 – 115102-9

Abstract

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Given the lack of a standardized evaluation system for the infrared jamming effectiveness of false targets, this paper first uses a co-saliency detection model to extract the main parts of the true and false targets. Then the perceptual similarity algorithm is improved by combining the operational requirements of false targets in the infrared band. Finally, a background-independent evaluation model for infrared jamming effectiveness of false targets is constructed. The experimental results show that the model can quantitatively reflect the infrared jamming effectiveness of a single false target and distinguish the infrared jamming effectiveness of different types of false targets. In addition, the model has stronger robustness than traditional evaluation models.