Bridging Synthetic and Real-World Domains: A Human-in-the-Loop Weakly-Supervised Framework for Industrial Toxic Emission Segmentation

arXiv — cs.CVThursday, November 13, 2025 at 5:00:00 AM
The introduction of CEDANet marks a significant advancement in the field of industrial smoke segmentation, which is vital for monitoring air quality and protecting the environment. Traditional methods often struggle due to the high costs and scarcity of pixel-level annotations. CEDANet addresses this challenge by employing a human-in-the-loop approach that combines citizen-provided video-level labels with adversarial feature alignment. This innovative framework has demonstrated remarkable results, achieving an F1-score of 0.414 and a smoke-class IoU of 0.261, vastly outperforming the baseline model's scores of 0.083 and 0.043. Furthermore, CEDANet's performance with citizen-constrained pseudo-labels is comparable to that of models trained on a limited dataset of 100 fully annotated images, showcasing its potential for scalability and cost-efficiency. This research not only enhances the accuracy of smoke segmentation but also highlights the effective integration of citizen science into …
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