Few researches have studied simultaneous detection of smoke and flame accompanying fires due to their different physical natures that lead to uncertain fluid patterns. In this study, we collect a large image data set to re-label them as a multi-label image classification problem so as to identify smoke and flame simultaneously. In order to solve the generalization ability of the detection model on account of the movable fluid objects with uncertain shapes like fire and smoke, and their not compactible natures as well as the complex backgrounds with high variations, we propose a data augment method by random image stitch to deploy resizing, deforming, position variation, and background altering so as to enlarge the view of the learner. Moreover, we propose a self-learning data augment method by using the class activation map to extract the highly trustable region as new data source of positive examples to further enhance the data augment. By the mutual reinforcement between the data augment and the detection model that are performed iteratively, both modules make progress in an evolutionary manner. Experiments show that the proposed method can effectively improve the generalization performance of the model for concurrent smoke and fire detection.
翻译:很少有研究研究过同时检测烟火和火焰同时发生的火灾,因为它们的物理性质不同,导致不确定的流体模式。在本研究中,我们收集了大型图像数据集,将其重新标为多标签图像分类问题,以便同时识别烟雾和火焰。为了解决检测模型的概括性能力,其原因是具有火灾和烟雾等不确定形状的可移动流体物体,其非紧凑性以及其复杂背景差异很大,我们建议采用随机图像缝合方法来部署调整、变形、位置变异和背景改变,以扩大学习者的观点。此外,我们提议采用自学数据增强方法,利用类动图来提取高度可信任的区域,作为积极实例的新数据来源,以进一步加强数据。通过数据增强和互动进行的检测模型之间的相互加强,两个模块都以进化方式取得进展。实验表明,拟议的方法可以有效地改进同时检测烟雾和火灾的模型的普及性能。