基于颜色的火灾数据标注超像素语义分割

Pedro Messias, Maria João Sousa, Alexandra Moutinho
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引用次数: 0

摘要

基于图像的火灾探测是一项安全关键任务,它需要高质量的数据集来确保真实场景中的性能保证。自动火灾探测系统的需求不断增长,但开放数据集的数量和大小有限,以及缺乏注释,阻碍了模型的开发。解决这个问题需要专家投入大量时间对图像数据集中的事件进行分类和分割。为了构建大规模的精选数据集,本文提出了一种基于超像素聚合和颜色特征的语义分割的数据标注方法。该方法引入了可解释的语言模型,生成逐像素的火灾分割和注释,可以通过简单的微调规则进行解释,这些规则可以支持火灾领域专家后续的注释验证。使用公开可用的数据集,即通过评估分割质量和标记火焰颜色类别来评估所提出算法的性能。这种方法的结果为创建大规模数据集铺平了道路,这些数据集可以支持未来在火灾探测系统中部署基于学习的架构。
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Color-based Superpixel Semantic Segmentation for Fire Data Annotation
Image-based fire detection is a safety-critical task, which requires high-quality datasets to ensure performance guarantees in real scenarios. Automatic fire detection systems are in ever-increasing demand, but the limited number and size of open datasets, and lack of annotations, hinder model development. Solving this issue requires that experts dedicate a significant time to classify and segment fire events in image datasets. Towards building large-scale curated datasets, this paper presents a data annotation method that leverages semantic segmentation based on superpixel aggregation and color features. The approach introduces interpretable linguistic models that generate pixel-wise fire segmentation and annotations, which are explainable through simple fine-tunable rules that can support subsequent annotation validation by fire domain experts. The performance of the proposed algorithm is evaluated for relevant scenarios using a publicly available dataset, namely through the assessment of the segmentation quality and the labeling of fire color categories. The outcomes of this approach pave the way for creating large-scale datasets that can empower future deployments of learning-based architectures in fire detection systems.
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