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Graph-based network generation and CCTV processing techniques for fire evacuation

机译:基于图形的网络生成和CCTV处理技术,用于消防疏散

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摘要

Evacuation navigation in emergencies such as fires is one of the most important operational considerations for a building. The large and complicated interior spaces, as well as the intensive population significantly increase the difficulty of fire evacuation in large-scale buildings. The environmental changes such as the spread of a fire and the flow of evacuees exacerbate the difficulties of fire evacuation. Therefore, this research aims to develop an adaptive approach for path planning against the rapid environmental changes in fires. In this paper, a graph-based network is formed by integrating MAT with VG, with the addition of a buffer zone. The network uses real-time videos from closed-circuit television (CCTV) cameras facilitated by deep learning algorithms to detect and tally the number of people in a target area. According to the tally of people and a proposed walkability model, the congestion conditions of an area can be analysed so that evacuees can avoid any areas that are congested. An Internet of things sensor network is also established to detect the presence of hazardous areas. The proposed solution allows evacuation navigation to be done in real time. An illustrative example is provided to demonstrate the functionality and features of this proposed methodology.
机译:火灾等紧急情况下的疏散导航是建筑物最重要的操作考虑之一。大型和复杂的内部空间,以及密集的人口显着增加了大型建筑物中火灾疏散的难度。诸如火灾和疏散流的传播等环境变化加剧了火灾疏散的困难。因此,本研究旨在开发一种适应性方法,以防止燃烧的快速环境变化。在本文中,通过将垫与Vg集成,添加缓冲区来形成基于图形的网络。网络使用深度电视电视(CCTV)摄像机的实时视频,该摄像机促进了深度学习算法,以检测和计数目标区域中的人数。根据人和拟议的步行模型的计数,可以分析一个区域的拥堵条件,以便撤离可以避免拥挤的任何区域。还建立了一种物联网传感器网络以检测存在危险区域的存在。所提出的解决方案允许实时进行疏散导航。提供了说明性示例以展示这种提出的方​​法的功能和特征。

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