An Efficient Technique for Fire Detection Using Deep Learning Algorithm

Brenda G., Franklin Jino R. E., Sherin Paul P
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Abstract

Fire detection using computer vision techniques and image processing mainly considered for rescuing operation. Indeed, good accuracy of computer vision techniques can outperform traditional models of fire detection. Computer vision techniques are being replaced by deep learning models such as Convolutional Neural Networks (CNN). Existing System has only been assessed on balanced datasets, which can lead to the unsatisfied results and mislead real-world performance as fire is a rare and abnormal real-life event. Also, the result of traditional CNN shows that its performance is very low, when evaluated on imbalanced datasets. Therefore, this proposed system use of transfer learning that is based on deep CNN approach to detect fire. It uses pre-trained deep CNN architecture namely VGG, and Mobile Net for development of fire detection system. These deep CNN models are tested on imbalanced datasets by considering real world scenarios. The results of deep CNNs models show that these models increase accuracy significantly and it is observed that deep CNNs models are completely outperforming traditional Convolutional Neural Networks model. The accuracy of Mobile Net is roughly the same as VGG Net, however, Mobile Net is smaller in size and faster than VGG
一种基于深度学习算法的高效火灾探测技术
火灾探测主要是利用计算机视觉技术和图像处理技术进行救援操作。事实上,良好的计算机视觉技术的准确性可以优于传统的火灾探测模型。计算机视觉技术正在被卷积神经网络(CNN)等深度学习模型所取代。现有的系统只在平衡的数据集上进行了评估,这可能导致不满意的结果,并误导现实世界的性能,因为火灾是罕见的、不正常的现实生活事件。同时,传统CNN在不平衡数据集上的性能也很低。因此,本文提出的系统使用基于深度CNN方法的迁移学习来探测火灾。它采用预先训练好的深度CNN架构VGG和移动网络来开发火灾探测系统。这些深度CNN模型通过考虑现实世界场景在不平衡数据集上进行测试。深度cnn模型的结果表明,这些模型的准确率显著提高,并且深度cnn模型完全优于传统的卷积神经网络模型。移动网络的精度与VGG网大致相同,但移动网络的体积比VGG小,速度比VGG快
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