Title
A Spatio-Temporal Model for Forest Fire Detection Using HJ-IRS Satellite Data.
Abstract
Fire detection based on multi-temporal remote sensing data is an active research field. However, multi-temporal detection processes are usually complicated because of the spatial and temporal variability of remote sensing imagery. This paper presents a spatio-temporal model (STM) based forest fire detection method that uses multiple images of the inspected scene. In STM, the strong correlation between an inspected pixel and its neighboring pixels is considered, which can mitigate adverse impacts of spatial heterogeneity on background intensity predictions. The integration of spatial contextual information and temporal information makes it a more robust model for anomaly detection. The proposed algorithm was applied to a forest fire in 2009 in the Yinanhe forest, Heilongjiang province, China, using two-month HJ-1B infrared camera sensor (IRS) images. A comparison of detection results demonstrate that the proposed algorithm described in this paper are useful to represent the spatio-temporal information contained in multi-temporal remotely sensed data, and the STM detection method can be used to obtain a higher detection accuracy than the optimized contextual algorithm.
Year
DOI
Venue
2016
10.3390/rs8050403
REMOTE SENSING
Keywords
Field
DocType
forest fire detection,spatio-temporal model (STM),thermal infrared,HJ-1B
Anomaly detection,Contextual information,Thermal infrared,Image sensor,Remote sensing,Spatial heterogeneity,Pixel,Geology,Fire detection,Satellite data
Journal
Volume
Issue
ISSN
8
5
2072-4292
Citations 
PageRank 
References 
0
0.34
0
Authors
8
Name
Order
Citations
PageRank
Lei Lin111.03
Meng Yu2207.52
Anzhi Yue312.38
Yuan Yuan430126.63
Xiaoyi Liu511.37
Jingbo Chen6196.15
Mengmeng Zhang711524.91
Jiansheng Chen827331.28