Validation method of infrared imaging simulation based on recognition range

Authors

  • Guo, Bingtao

Keywords:

imaging simulation, infrared imaging system

Abstract

With the development and application of infrared (IR) imaging technology, the IR imaging simulation and its validation methods have been paid more and more attention. The existing validation methods of IR imaging simulation model rarely take the impact of human vision into account, which will lead to the serious consequences. In order to solve this problem, the validation method of IR imaging simulation model based on the recognition range was proposed. With the recognition range as the accuracy evaluation factor of IR imaging simulation model, the comprehensive differences of various aspects such as gray level distribution, signal-to-noise ratio (SNR) , resolution, imaging size and human vision between the simulated image and the measured image could be evaluated. © 2022 Editorial office of Journal of Applied Optics. All rights reserved.

References

NELSSON C, HERMANSSON P, NYBERG S, Et al., Optical signature modeling at FOI, Electro-Optical and Infrared Systems: Technology and Applications III, (2006); HUANG Xi, ZHANG Jianqi, ZHANG Shaoze, Et al., Realistic infrared image generation method of target[J], Infrared and Laser Engineering, 42, 4, pp. 1084-1088, (2013); LORENZO M, DEASO B, LU Y, Et al., DIS IR simulation models for fidelity, signature texture, and atmosphere sensor effects, 2495, pp. 42-50, (1995); HICKMAN D L, SMITH M I., The use of algorithmic behavioural transfer functions in parametric EO system performance models, 9648, pp. 964807-964821, (2015); NELSSON C, ANDERSSON E, BOERJESSON D, Et al., Methods for validation of optical signature models, 5811, pp. 212-223, (2005); WILLERS C J, WILLERS M S, LAPIERRE F., Signature modelling and radiometric rendering equations in infrared scene simulation systems, 8187, pp. 173-188, (2011); FANNING J D., Metrics for image-based modeling of target acquisition, 8187, pp. 173-188, (2012); Fudi ZHANG, Jianqi ZHANG, Yin XU, Quantization simulation and fidelity validation of infrared staring imaging sensors[J], Acta Photonica Sinica, 40, 4, pp. 596-601, (2011); LI K, WANG X R, ZHANG W G, Et al., Research on accurate deduction of infrared imaging features of subpixel targets measured area targets[J], Applied Optics, 57, 31, pp. 9499-9507, (2018); Ke LI, Xiaorui WANG, Bingtao GUO, Et al., Accurate method of generating infrared imaging features by the angular disturbance of an airborne platform[J], Applied Optics, 58, 18, pp. 4835-4845, (2019); Changcai YANG, Jiayi MA, Shengxiang QI, Et al., Directional support value of Gaussian transformation for infrared small target detection[J], Applied Optics, 54, 9, pp. 2255-2265, (2015); Qian LI, Cui YANG, Jianqi ZHANG, Target acquisition performance in a cluttered environment[J], Applied Optics, 51, 31, pp. 7668-7673, (2012); DEAVER D M, FLUG E, BOETTCHER E, Et al., Infrared sensor modeling for human activity discrimination tasks in urban and maritime environments[J], Applied Optics, 48, 19, pp. 3537-3556, (2009); Tianlei MA, Zelin SHI, Jian YIN, Et al., Rectilinear-motion space inversion-based detection approach for infrared dim air targets with variable velocities[J], Optical Engineering, 55, 3, pp. 033102-033113, (2016); HODGKIN V A, KOWALEWSKI B, TOMKINSON D, Et al., Modeling of IR sensor performance in cold weather, Infrared Imaging Systems: Design, Analysis, Modeling, and Testing XVII, pp. 620708-620719, (2006)

Published

30-12-2022

How to Cite

Bingtao, G. (2022). Validation method of infrared imaging simulation based on recognition range. Journal of Applied Optics, 43(2), 1–7. Retrieved from https://appliedopticsjournal.net/index.php/JAO/article/view/41

Issue

Section

Original Research Article

Similar Articles

<< < 1 2 3 4 5 > >> 

You may also start an advanced similarity search for this article.