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Remote Sensing for Natural Resources    2023, Vol. 35 Issue (1) : 41-48     DOI: 10.6046/zrzyyg.2022048
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Information extraction method of mangrove forests based on GF-6 data
XU Qingyun(), LI Ying, TAN Jing, ZHANG Zhe
Beijing Aerospace TITAN Technology Co. Ltd., Beijing 100070, China
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Abstract  

Mangrove forests are periodically inundated by tidal water. This characteristic opens up an opportunity but also poses a challenge for the information extraction of mangrove forests using remote sensing technology. To explore the contribution of the red-edge band of GF-6 satellite data in information extraction of mangrove forests under the condition of random tides, this study investigated the southeastern Dongzhaigang area-the largest mangrove forest area in Hainan Province and obtained standard samples using the GF-2 satellite data. The reflectance spectral curves of typical surface features were constructed based on the standard samples and the GF-6 satellite data. Then, a baseline was established based on the bands strongly absorbed by vegetation, and the intertidal mangrove forest index (IMFI) applicable to the GF-6 satellite data was defined using the average reflectance of bands above the baseline. Meanwhile, the red-edge normalized difference vegetation index (RENDVI) was also established. The two indices were compared with commonly used indices, such as the normalized difference vegetation index (NDVI) and the normalized difference water index (NDWI), using box-whisker plots. Then, using the decision tree model constructed based on IMFI and RENDVI, information on typical mangrove forest in the study area were extracted. The precision of the extraction results was verified through comparison with visual interpretation results of the samples extracted from the GF-2 satellite data. The results show that: ① Because mangrove forests are periodically inundated by tidal water, the reflectance spectral curves of intertidal mangrove forests were relatively scattered between the standard spectral curves of water bodies and mangrove forests; ② IMFI and RENDVI can reflect the differences in the reflectance spectra of the red-edge and near-infrared bands and thus effectively separated the intertidal mangrove forests, mangrove forests, and water bodies; ③ The decision tree model constructed based on IMFI and RENDVI can effectively extract the distribution information of the mangrove forests, with an overall accuracy of 0.95 and a Kappa coefficient of 0.90. The introduction of the red-edge band plays an important role in the information extraction of mangrove forests and has great potential for application. This study can be used as a reference for the ecological applications of red-edge data from domestic satellites.

Keywords GF-6 satellite      red-edge band      mangrove forest index      reflectance spectrum      Dongzhaigang     
ZTFLH:  TP79  
Issue Date: 20 March 2023
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Qingyun XU
Ying LI
Jing TAN
Zhe ZHANG
Cite this article:   
Qingyun XU,Ying LI,Jing TAN, et al. Information extraction method of mangrove forests based on GF-6 data[J]. Remote Sensing for Natural Resources, 2023, 35(1): 41-48.
URL:  
https://www.gtzyyg.com/EN/10.6046/zrzyyg.2022048     OR     https://www.gtzyyg.com/EN/Y2023/V35/I1/41
Fig.1  Location of study area
卫星 传感器 采集时间 产品序列号 11: 00
对应潮
高/cm
12: 00
对应潮
高/cm
GF-2 PMS1 2020-08-10
11: 29: 34
4982331 113 130
2020-08-10
11: 29: 37
4982332
PMS2 2020-08-10
11: 29: 34
4982394
2020-08-10
11: 29: 37
4982395
GF-6 WFV 2021-01-14
11: 44: 49
1120071535 181 164
Tab.1  Description of satellite data
Fig.2  Technology roadmap
Fig.3  Reflectance spectral curves of typical land cover types in study area
Fig.4  Baseline theoretical diagram of building IMFI
Fig.5  Boxplot of different index values of mangrove forest,intertidal mangrove forest and water
Fig.6  Mangrove extraction results
覆盖类型 分类结果
红树林 其他 总计 生产者精度/%
红树林 89 4 93 96
其他 5 91 96 95
总计 94 95 189
用户精度/% 95 96
Tab.2  Mangrove extraction accuracy statistics
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