Fire Detection inImages Using FrameworkBased on Image Processing, Motion Detection and Convolutional Neural Network

Q3 Computer Science
Yavuz Selim Taspinar, M. Koklu, Mustafa Altın
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引用次数: 5

Abstract

: Fire detection in images has been frequently used recently to detect fire at an early stage. These methods play an important role in reducing the loss of life and property. Fire is not only chemically complex, but also physically very complex. The shape and color of the flame varies according to the type of fuel in the fire. This has made fire detection a very challenging problem. Advanced image processing algorithms are also needed to accurately detect fire. To solve this problem, a three-stage fire framework was created in this study. In the first stage, the flame region was extracted from the images containing the fire region with the basic image processing algorithms. At this stage, reduce brightness, HSL, YCbCr, median and herbaceous filters are applied successively to the image. Since the flame image has a polygonal structure by nature, the number of edges of the flame region has been found. In the second stage, the mobility feature of the flame was utilized. For this purpose, the mobility of the flame was determined by comparing the video frames containing the fire image. The CNN method was used to detect the fire in the images. The CNN model was trained with the transfer learning method using the Inception V3, SequeezeNet, VGG16 and VGG19 trained models. As a result of the tests of the models, 98.8%, 97.0%, 97.3% and 96.8% classification success were obtained, respectively. With the proposed fire detection framework, it is thought that the damage caused by the fire can be reduced by early detection of the fire and timely intervention.
基于图像处理、运动检测和卷积神经网络的框架图像火灾检测
:图像中的火灾检测最近经常用于在早期阶段检测火灾。这些方法在减少生命和财产损失方面发挥着重要作用。火不仅在化学上很复杂,而且在物理上也很复杂。火焰的形状和颜色因火灾中燃料的类型而异。这使得火灾探测成为一个极具挑战性的问题。还需要先进的图像处理算法来准确探测火灾。为了解决这个问题,本研究建立了一个三阶段的火灾框架。在第一阶段,利用基本的图像处理算法从包含火焰区域的图像中提取火焰区域。在这个阶段,降低亮度、HSL、YCbCr、中值和草本滤波器依次应用于图像。由于火焰图像本质上具有多边形结构,因此已经找到了火焰区域的边缘数量。在第二阶段,利用了火焰的流动性特征。为此,通过比较包含火灾图像的视频帧来确定火焰的流动性。CNN方法用于检测图像中的火灾。使用Inception V3、SequezeNet、VGG16和VGG19训练模型,使用迁移学习方法训练CNN模型。模型的测试结果表明,分类成功率分别为98.8%、97.0%、97.3%和96.8%。利用所提出的火灾探测框架,人们认为可以通过早期发现火灾并及时干预来减少火灾造成的损害。
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来源期刊
International Journal of Intelligent Systems and Applications in Engineering
International Journal of Intelligent Systems and Applications in Engineering Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.30
自引率
0.00%
发文量
18
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