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• Draft 1: Improved MFB-YOLO model detects irregular gas clouds with 93% precision. • Draft 2: Global Attention Mechanism fuses spatial and channel weights for fluid targets. • Draft 3: Infrared-visible image fusion reduces false alarms from thermal interference. • Draft 4: Transfer learning with time-series analysis captures dynamic gas evolution. • Draft 5: System inference speed of 0.09 s ensures real-time industrial monitoring. Since most hazardous gases are transparent in the visible spectrum, infrared imaging is indispensable for detection. However, in complex industrial environments, this method suffers from high false alarm rates due to irregular gas cloud boundaries. To address detection challenges and high false alarm rates caused by irregular gas cloud boundaries in complex industrial environments, this paper proposes an improved Moving Fluid Boundary YOLO (MFB-YOLO). Built upon the YOLOv8 framework, the algorithm incorporates three key enhancements to capture dynamic gas cloud characteristics. First, infrared–visible image fusion is employed to robustly differentiate transient gas clouds from stable interference sources like personnel. Second, addressing the limitations of conventional static attention mechanisms for fluid targets, we introduce a Novel Global Attention Mechanism (GAM). GAM synergistically integrates channel and spatial attention via dynamic weight allocation to prioritize gas-dominant regions, significantly improving adaptability to fluid boundaries. Third, to tackle the generalization bottleneck caused by the dynamic nature of diffusion and data scarcity, we integrate a strategy combining transfer learning with time-series analysis. This allows the model to inherit robust feature representations from large-scale data-rich domains while simultaneously capturing the continuous spatiotemporal evolution of gas shapes. Experimental results on 1,1-difluoroethane demonstrate that the improved MFB-YOLO achieves a Precision of 93% and an mAP50 of 89%, substantially outperforming the baseline. Although the inference speed increases slightly to 0.09 s per sample, it remains significantly faster than the image acquisition interval, ensuring real-time performance. This work presents a robust, industrially viable solution for high-precision detection of non-fixed-shape gas clouds.
Published in: Optics & Laser Technology
Volume 201, pp. 115199-115199