基于 Yolo-V8 的智能城市改进型火灾探测方法

Madhukara S, Divya Reddy P R
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摘要

火灾探测系统对于防止财产损失、挽救生命、保护人员和财产安全至关重要。传统技术通常依赖于基于传感器的策略,而这种策略在错综复杂的环境中存在局限性。为了提高准确性和效率,本研究提出了一种利用机器学习和计算机视觉技术的智能火灾探测系统。该技术利用深度学习算法实时分析视频流,根据视觉模式和属性识别火灾事故。未来的火灾探测系统研究将受益于本研究为室内外情况下的吸烟者和火灾探测问题提供的信息。基于 YOLOv8 算法的智慧城市改进型火灾探测技术是智能火灾探测系统(SFDS),它利用深度学习来实时识别火灾的特定属性。与传统方法相比,SFDS 策略可能更具成本效益、减少误报并提高火灾检测的准确性,它还可以扩展到发现智慧城市中其他耐人寻味的方面,如煤气泄漏或洪水。建议的智慧城市框架包括四个主要层次:应用层(i)、云层(iii)、雾层(ii)和物联网层(iv)。推荐的技术利用雾、云计算和物联网层来实时收集和了解数据。这可以降低人员或财产损失的几率,并加快反应速度。SFDS 在精确度和召回率方面表现出最先进的性能,所有类别的精确率高达 97.1%。其潜在应用领域包括智能安防系统、森林火灾监控和公共空间消防安全管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Fire Detection Approach Based On Yolo-v8 for Smart Cities
Systems for detecting fires are essential for preventing property damage and saving lives. defending people and property. Conventional techniques frequently depend on sensor-based strategies, which have limitations in intricate settings. In order to improve accuracy and efficiency, this study suggests an intelligent fire detection system that makes use of machine learning and computer vision techniques. The technology analyzes video streams in real time using deep learning algorithms to identify fire incidents based on visual patterns and attributes. Future research on fire detection systems will benefit from the information this study will provide for smoker and fire detection issues in both indoor and outdoor situations. The improved fire detection technique for smart cities that is based on the YOLOv8 algorithm is the smart fire detection system (SFDS), which uses deep learning to identify fire-specific properties in real-time. The SFDS strategy may be more cost-effective, reduce false alarms, and improve fire detection accuracy when compared to traditional methods. It can also be extended to find other intriguing aspects of smart cities, such as gas leakage or flooding. The proposed smart city framework consists of four primary levels: the application layer (i), cloud layer (iii), fog layer (ii), and internet of things layer (iv). The recommended technique uses fog, cloud computing, and the Internet of Things layer to collect and understand data in real time. This reduces the chance of damage to persons or property and enables faster reaction times. The SFDS demonstrated state- of-the-art performance in terms of precision and recall, with a high precision rate of 97.1% across all classes. Among the potential applications are intelligent security systems, forest fire monitoring, and public space fire safety management.
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