Back to Search Start Over

Invisible Gas Detection: An RGB-Thermal Cross Attention Network and A New Benchmark

Authors :
Wang, Jue
Lin, Yuxiang
Zhao, Qi
Luo, Dong
Chen, Shuaibao
Chen, Wei
Peng, Xiaojiang
Publication Year :
2024

Abstract

The widespread use of various chemical gases in industrial processes necessitates effective measures to prevent their leakage during transportation and storage, given their high toxicity. Thermal infrared-based computer vision detection techniques provide a straightforward approach to identify gas leakage areas. However, the development of high-quality algorithms has been challenging due to the low texture in thermal images and the lack of open-source datasets. In this paper, we present the RGB-Thermal Cross Attention Network (RT-CAN), which employs an RGB-assisted two-stream network architecture to integrate texture information from RGB images and gas area information from thermal images. Additionally, to facilitate the research of invisible gas detection, we introduce Gas-DB, an extensive open-source gas detection database including about 1.3K well-annotated RGB-thermal images with eight variant collection scenes. Experimental results demonstrate that our method successfully leverages the advantages of both modalities, achieving state-of-the-art (SOTA) performance among RGB-thermal methods, surpassing single-stream SOTA models in terms of accuracy, Intersection of Union (IoU), and F2 metrics by 4.86%, 5.65%, and 4.88%, respectively. The code and data will be made available soon.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.17712
Document Type :
Working Paper