advanced
Journal Information
Journal Information

   Description
   Editorial Board
   Guide for Authors
   Ordering

Contents Services
Contents Services

   Regular Issues
   Special Issues
   Authors Index

Links
Links

   FEI STU Bratislava    deGruyter-Sciendo

   Feedback

[1, 2025] 

Journal of Electrical Engineering, Vol 76, 1 (2025) 7-17, https://doi.org/10.2478/jee-2025-0002

Bimodal and trimodal image fusion: A study of subjective scores and objective measures

Mohammed Zouaoui Laidouni – Boban P. Bondžulić – Dimitrije M. Bujaković – Vladimir S. Petrović – Touati Adli – Milenko S. Andrić

   Thermal vision significantly enhances visibility under various environmental conditions. So, this paper presents a compre-hensive study on the importance of thermal vision in improving image fusion human visual perception through subjective evaluation. The study focuses on the fusion of three imaging sensors commonly used in computer vision applications: long-wavelength infrared (LWIR), visible (VIS), and near-infrared (NIR). Four image fusion alternatives (LWIR+VIS, LWIR+NIR, NIR+VIS, and LWIR+NIR+VIS) are produced using a reliable deep learning approach and assessed using both subjective tests and objective metrics. The subjective evaluation is performed involving 15 military students and officers from the University of Defence in Belgrade, while objective assessment is elaborated using eight no-reference measures. Results indicate that fused images with thermal information show better visual performance than non-thermal based image fusion alternative (NIR+VIS). Moreover, LWIR+NIR+VIS and LWIR+NIR fused images provide similar visual appearance, demonstrating that the bimodal image fusion (LWIR+NIR) can be sufficient to produce a highly informative fused image. Additionally, the degree of agreement between subjective and objective scores is calculated. The simple edge intensity measure shows the highest degree of agreement, while the image entropy demonstrates the second-best score.

Keywords: thermal sensor, LWIR, NIR, VIS, image fusion, subjective quality assessment, objective quality assessment


[full-paper]


© 1997-2024  FEI STU Bratislava