Enhancing the quality of gauge images captured in smoke and haze scenes through deep learning
Oscar H. Ram\'irez-Agudelo, Akshay N. Shewatkar, Edoardo Milana, Roland C. Aydin, Kai Franke

TL;DR
This paper demonstrates that deep learning models, specifically FFA-Net and AECR-Net, can significantly improve the visibility of gauge images captured in smoky and hazy environments, aiding automatic reading for emergency and monitoring applications.
Contribution
The study introduces a new synthetic dataset for gauge images in haze and smoke, and evaluates deep learning architectures for image enhancement in these challenging conditions.
Findings
AECR-Net outperforms FFA-Net in image enhancement quality.
High SSIM (~0.98) and PSNR (~43 dB) achieved on synthetic haze dataset.
Enhancement results are less effective on dense smoke images, highlighting challenges in such conditions.
Abstract
Images captured in hazy and smoky environments suffer from reduced visibility, posing a challenge when monitoring infrastructures and hindering emergency services during critical situations. The proposed work investigates the use of the deep learning models to enhance the automatic, machine-based readability of gauge in smoky environments, with accurate gauge data interpretation serving as a valuable tool for first responders. The study utilizes two deep learning architectures, FFA-Net and AECR-Net, to improve the visibility of gauge images, corrupted with light up to dense haze and smoke. Since benchmark datasets of analog gauge images are unavailable, a new synthetic dataset, containing over 14,000 images, was generated using the Unreal Engine. The models were trained with an 80\% train, 10\% validation, and 10\% test split for the haze and smoke dataset, respectively. For the…
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Taxonomy
TopicsFire Detection and Safety Systems · Image Enhancement Techniques · Fire dynamics and safety research
