论文标题
Yolov4在工业环境中基于图像的火灾检测
Image-Based Fire Detection in Industrial Environments with YOLOv4
论文作者
论文摘要
火灾爆发并在大规模毁灭性的周围环境中爆发时具有破坏力。最大程度地减少伤害的最佳方法是在有可能成长的机会之前尽快检测到火灾。因此,这项工作从图像流上使用对象检测来检测和识别火灾的潜力。在过去的六年中,对象检测使速度和准确性变得巨大,使实时检测可行。为了我们的目的,我们从几个公共资源中收集并标记了适当的数据,这些数据已用于训练和评估基于流行的Yolov4对象检测器的多种模型。由协作工业合作伙伴驱动的我们的重点是在工业仓库环境中实施我们的系统,其特征是高高的天花板。在此设置中,传统烟雾探测器的缺点是,烟雾必须上升到足够的高度。这项研究中提出的AI模型设法超过了这些探测器的大量时间,提供了宝贵的期望,可以帮助最大程度地减少火灾的影响。
Fires have destructive power when they break out and affect their surroundings on a devastatingly large scale. The best way to minimize their damage is to detect the fire as quickly as possible before it has a chance to grow. Accordingly, this work looks into the potential of AI to detect and recognize fires and reduce detection time using object detection on an image stream. Object detection has made giant leaps in speed and accuracy over the last six years, making real-time detection feasible. To our end, we collected and labeled appropriate data from several public sources, which have been used to train and evaluate several models based on the popular YOLOv4 object detector. Our focus, driven by a collaborating industrial partner, is to implement our system in an industrial warehouse setting, which is characterized by high ceilings. A drawback of traditional smoke detectors in this setup is that the smoke has to rise to a sufficient height. The AI models brought forward in this research managed to outperform these detectors by a significant amount of time, providing precious anticipation that could help to minimize the effects of fires further.