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基于Faster R-CNN的颜色导向火焰检测
引用本文:黄杰,巢夏晨语,董翔宇,高云,朱俊,杨波,张飞,尚伟伟.基于Faster R-CNN的颜色导向火焰检测[J].计算机应用,2020,40(5):1470-1475.
作者姓名:黄杰  巢夏晨语  董翔宇  高云  朱俊  杨波  张飞  尚伟伟
作者单位:1.国网安徽省电力有限公司 检修分公司, 合肥 230061 2.中国科学技术大学 信息科学技术学院,合肥 230027 3.国网安徽省电力有限公司,合肥 230022
基金项目:国网安徽省电力有限公司2019年科技项目(52120319000A)。
摘    要:基于深度特征的目标检测方法Faster R-CNN在火焰检测任务上存在检测效率低的问题,因此提出了基于颜色引导的抛锚策略。该策略设计火焰颜色模型来限制锚的生成,即利用火焰颜色约束锚的生成区域,从而减少了初始锚的数量,提升了计算效率。为了进一步提高网络的计算效率,将区域生成网络中的卷积层替换成掩膜卷积。为了验证所提方法的检测效果,采用BoWFire和Corsician数据集进行验证。实验结果表明,该方法实际检测速度相较于原Faster R-CNN提高了10.1%,BoWFire上该方法的火焰检测F值为0.87,Corsician上该方法的准确度可达99.33%。所提方法可以提高火焰检测的效率,并能够准确检测图像中的火焰。

关 键 词:火焰检测  颜色模型  卷积神经网络  FASTER  R-CNN  
收稿时间:2019-10-14
修稿时间:2019-12-09

Faster R-CNN based color-guided flame detection
HUANG Jie,CHAOXIA Chenyu,DONG Xiangyu,GAO Yun,ZHU Jun,YANG Bo,ZHANG Fei,SHANG Weiwei.Faster R-CNN based color-guided flame detection[J].journal of Computer Applications,2020,40(5):1470-1475.
Authors:HUANG Jie  CHAOXIA Chenyu  DONG Xiangyu  GAO Yun  ZHU Jun  YANG Bo  ZHANG Fei  SHANG Weiwei
Affiliation:1.Maintenance Branch, State Grid Anhui Electric Power Company Limited, HefeiAnhui 230061, China
2.School of Information Science and Technology, University of Science and Technology of China, HefeiAnhui 230000, China
3.State Grid Anhui Electric Power Company Limited, HefeiAnhui 230022, China
Abstract:Aiming at the problem of low detection rate of depth feature based object detection method Faster R-CNN (Faster Region-based Convolutional Neural Network) in flame detection tasks, a color-guided anchoring strategy was proposed. In this strategy, a flame color model was designed to limit the generation of anchors, which means the flame color was used to limit the generation locations of the anchors, thereby reducing the number of initial anchors and improving the computational efficiency. To further improve the computational efficiency of the network, the masked convolution was used to replace the original convolution layer in the region proposal network. Experiments were conducted on BoWFire and Corsician datasets to verify the detection performance of the proposed method. The experimental results show that the proposed method improves detection speed by 10.1% compared to the original Faster R-CNN, has the F-measure of flame detection of 0.87 on BoWFire, and has the accuracy reached 99.33% on Corsician.The proposed method can improve the efficiency of flame detection and can accurately detect flames in images.
Keywords:fire detection  color model  Convolutional Neural Network (CNN)  Faster Region-based Convolutional Neural Network (Faster R-CNN)  anchor  
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