Early smoke detection of forest wildfire video using deep belief network

Rabeb Kaabi, M. Sayadi, M. Bouchouicha, F. Fnaiech, E. Moreau, J. Ginoux
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引用次数: 26

Abstract

This paper presents a novel approach for smoke detection to overcome forest wildfires based on machine learning technique (Deep Belief Network). Video smoke detection is applied on many surveillance and security applications. Smoke detection method should have a high detection rate to have a strong detector of smoke detection. Deep Belief Network which is a stacked layers of Restricted Boltzman Machine is the technique that we used for smoke detection. This technique extracts and classify smoke and no smoke regions simultaneously. The effectiveness of our implemented smoke detection method is evaluated after calculating smoke detection rate, time of pre-traing and time of fine-tuning. The higher is the detection rate the better is the smoke method and the lowest is the time of pre-training and fine-tuning the speeder is the method for smoke detection.
基于深度信念网络的森林野火视频早期烟雾检测
本文提出了一种基于机器学习技术(深度信念网络)的森林火灾烟雾检测新方法。视频烟雾检测应用于许多监控和安防应用中。感烟探测方法要有较高的探测率才能有很强的感烟探测探测器。深度信念网络是一种多层受限玻尔兹曼机的叠加技术,是我们用于烟雾探测的技术。该技术同时对有烟区和无烟区进行提取和分类。通过计算烟雾探测率、预训练时间和微调时间,对我们实现的烟雾探测方法的有效性进行了评价。烟雾检测方法的检测率越高越好,预训练和微调的时间越短,烟雾检测方法的检测速度越快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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