利用R-CNN在智能城市室内外防火监控系统中进行视频烟雾/火灾传感

S. Saponara, Abdussalam Elhanashi, A. Gagliardi
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引用次数: 7

摘要

这项工作提出了一种基于视频摄像机的火灾/烟雾传感技术,用于防火监视系统的早期预警。通过利用R-CNN(区域卷积神经网络),开发了一种检测技术,用于测量室内(例如铁路车厢,集装箱,公共汽车车厢,家庭,办公室)或室外(例如仓库或停车场)受限视频监控环境中的烟雾和火灾特征。为了降低成本,考虑的应用方案是在一个闭路电视系统中安装一个固定的摄像机,在可见光范围内工作,用于监视目的。训练阶段使用室内和室外图像集,烟雾和非烟雾场景来评估真阳性/真阴性检测和假阳性/假阴性拒绝的能力。为了生成训练集,使用了Ground Truth Labeler应用程序,并将其应用于开放获取的Firesense数据集,包括数十个室内和室外火灾/烟雾场景,作为FP7项目的输出,以及其他未公开的视频,这些视频由意大利铁路公司在其位于意大利Osmannoro的测试设施中对铁路车厢进行了特定的火灾/烟雾测试。所取得的结果表明,所提出的R-CNN技术适用于创建用于火灾/烟雾探测的智能视频监控系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting R-CNN for video smoke/fire sensing in antifire surveillance indoor and outdoor systems for smart cities
This work presents a video-camera-based fire/smoke sensing technique for early warning in antifire surveillance systems. By exploiting R-CNN (Region Convolutional Neural Network), a detection technique is developed for the measurement of the smoke and fire characteristics in restricted video surveillance environments, both indoor (e.g. a railway carriage, container, bus wagon, homes, offices), or outdoor (e.g. storage or parking areas). The considered application scenario, to reduce costs, is composed of a single, fixed camera per scene, working in the visible spectral range already installed in a closed-circuit television system for surveillance purposes. The training phase is done with indoor and outdoor image sets, with both smoke and non-smoke scenarios to assess the capability of true-positive/true-negative detection and false-positive/false-negative rejection. To generate the training set, a Ground Truth Labeler app is used and applied to the open-access Firesense dataset, including tens of indoor and outdoor fire/ smoke scenes developed as the output of an FP7 project, plus other videos not publicly available, provided by Trenitalia during specific fire/smoke tests on railway wagons performed at their testing facility in Osmannoro, Italy. The achieved results show that the proposed R-CNN technique is suitable for the creation of a smart video-surveillance system for fire/smoke detection.
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