Fire Detection Using Video Images and Temporal Variations

Gwangsun Kim, Junyeong Kim, Sunghwan Kim
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引用次数: 3

Abstract

Fire detection is very crucial to the security and important to preserve the properties of citizens. On fire detection, various features such as extracted information from video and others have been used. The combination of various features can improve the accuracy of fire detection. Usually video images are an important resource for this task, and prior knowledge about colors and variations of fires can be used. Recently, deep neural network has shown the best performance in many task in computer visions. Thus, the use of deep neural network in fire detection has risen, but there were little works to use the temporally summarized information from the prior knowledge. To construct the deep neural network architecture reflecting this information and validate its performances, we gathered video clips and proposed the deep neural network using the temporal information from video clips is proposed. Analysis of real data showed that the proposed method improve the accuracy significantly. To summarize the temporal information we use the standard deviation of G-filter values of images along the time. By using this information, the more compact architecture can be constructed.
利用视频图像和时间变化进行火灾探测
火灾探测对安全至关重要,对保护市民的财产安全至关重要。在火灾探测方面,已经使用了各种功能,例如从视频中提取信息等。多种特征的结合可以提高火灾探测的准确性。通常视频图像是这项任务的重要资源,可以使用关于颜色和火灾变化的先验知识。近年来,深度神经网络在计算机视觉领域的许多任务中表现出了最好的性能。因此,深度神经网络在火灾探测中的应用有所增加,但利用先验知识中临时总结的信息的工作很少。为了构建反映这些信息的深度神经网络架构并验证其性能,我们收集了视频片段,并提出了利用视频片段中的时间信息构建深度神经网络的方法。实际数据分析表明,该方法显著提高了检测精度。为了总结时间信息,我们使用图像G-filter值随时间的标准差。通过使用这些信息,可以构建更紧凑的体系结构。
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