|本期目录/Table of Contents|

[1]张 莹,郭红梅,尹文刚,等.基于SIFT特征与SVM分类的地震灾情图像信息异常检测方法*[J].地震研究,2019,42(02):265-272.
 ZHANG Ying,GUO Hongmei,YIN Wengang,et al.Detection Method of Earthquake Disaster Image Anomaly Based on SIFT Feature and SVM Classification[J].Journal of Seismological Research,2019,42(02):265-272.
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基于SIFT特征与SVM分类的地震灾情图像信息异常检测方法*(PDF/HTML)

《地震研究》[ISSN:1000-0666/CN:53-1062/P]

卷:
42
期数:
2019年02期
页码:
265-272
栏目:
出版日期:
2019-07-17

文章信息/Info

Title:
Detection Method of Earthquake Disaster Image Anomaly Based on SIFT Feature and SVM Classification
作者:
张 莹1郭红梅1尹文刚2赵 真1冉 青1
(1.四川省地震局,四川 成都 610041; 2.武警警官学院,四川 成都 610213)
Author(s):
ZHANG Ying1GUO Hongmei1YIN Wengang2ZHAO Zhen1RAN Qing1
(1. Sichuan Earthquake Agency,Chengdu 610041,Sichuan,China)(2. College of Armed Police Officer,Chengdu 610213,Sichuan,China)
关键词:
地震灾情图像信息 异常检测 SIFT SVM 芦山地震
Keywords:
earthquake disaster image information anomaly detection SIFT SVM Lushan M7.0 earthquake as an example. The results show that the algorithm model has better detection effect on image information anomalyit can further supply and improve the disaster in
分类号:
P315.941
DOI:
-
摘要:
通过分析以往震后获取的图像信息发现,部分信息存在与地震发生时间不吻合、不属于地震影响范围或与地震灾情无关等异常。通过将图像分类算法运用到震后灾情图像信息的异常检测中,提出了一种基于SIFT特征与SVM分类的地震灾情图像信息异常检测模型,以2013年芦山7.0级地震建筑物破坏灾情图像为例对模型进行验证。结果表明:该模型对图像信息异常的检测效果较好,可进一步补充和完善地震应急救援的灾情信息源,为政府抗震救灾科学决策提供灾情信息支撑。
Abstract:
Through analyzing the image information obtained after the earthquake,we found that some of the information does not match the time of the earthquake,does not belong to the earthquake influence field or has nothing to do with the earthquake disaster. In this paper,we applied the image classification algorithm to the detection of post-earthquake disaster image information anomaly,and proposed an earthquake disaster image information anomaly detection model based on SIFT feature and SVM classification,and verified the model by taking the damage image of the Lushan M7.0 earthquake as an example. The results show that the algorithm model has better detection effect on image information anomaly,it can further supply and improve the disaster information source for earthquake emergency rescue,and provide disaster information support for the government's scientific decision-making for earthquake relief. Key words:earthquake disaster image information; anomaly detection; SIFT; SVM; Lushan M7.0 earthquake as an example. The results show that the algorithm model has better detection effect on image information anomaly,it can further supply and improve the disaster information source for earthquake emergency rescue,and provide disaster information support for the government's scientific decision-making for earthquake relief.

参考文献/References:

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备注/Memo

备注/Memo:
收稿日期:2018-12-21
基金项目:“十三五”国家重点研发计划项目课题(2017YFC1500905)和中国地震局工程力学研究所基本科研业务费专项资助项目(2017QJGJ04)联合资助.
通讯作者:郭红梅(1984-),高级工程师,主要从事地震应急处置和地震灾情信息处理研究.E-mail:115453242@qq.com

更新日期/Last Update: 2019-07-17