Integration of Sentinel-2 Temporal Features and Continuous Change Detection Classification Algorithm for Dominant Tree Species Identification

CHEN Dan, LI Jing, HUO Jiangrun, MA Tianyue, YAN Xingguang, LI Yufei

PDF(4299 KB)
PDF(4299 KB)
Forest Engineering ›› 2025, Vol. 41 ›› Issue (03) : 505-516. DOI: 10.7525/j.issn.1006-8023.2025.03.007
Construction and Protection of Forest Resources

Integration of Sentinel-2 Temporal Features and Continuous Change Detection Classification Algorithm for Dominant Tree Species Identification

Author information +
History +

Abstract

The identification of dominant tree species is an important part of forestry resource surveys. Improving the accuracy of dominant tree species identification has significant practical implications for conducting forest resource surveys and related research. Using the Google Earth Engine (GEE) cloud platform, we obtained Sentinel-2 time series images for the Huodong mining area from January to December 2023. The annual growth trajectory features of dominant tree species were constructed based on the CCDC algorithm and the NDFI index. A dominant tree species hierarchical identification method combining "trajectory features + spectral features + texture features" of long-time series remote sensing images was proposed. A control group of "spectral features + texture features" was set up, and hierarchical classification and random forest classification algorithms were used to identify 7 dominant tree species (Pinus tabuliformisQuercus wutaishanseaBetula playphyllaLarix principis-rupprechtiiPlatycladus orientalisPopulus davidiana, and poplars spp.) in the Huodong mining area. The results showed that:1) The NDFI index can effectively distinguish between deciduous forests and evergreen forests; 2) The dominant tree species identification based on "trajectory features + spectral features + texture features" performed well, with an overall classification accuracy of 79.6% and a Kappa coefficient of 0.742 in the study area, which was 7.3% higher than the control group.

Key words

Dominant tree species identification / GEE / temporal trajectory features / normalized disturbance index / CCDC algorithm / time series harmonic analysis

Cite this article

Download Citations
CHEN Dan , LI Jing , HUO Jiangrun , et al . Integration of Sentinel-2 Temporal Features and Continuous Change Detection Classification Algorithm for Dominant Tree Species Identification. Forest Engineering. 2025, 41(03): 505-516 https://doi.org/10.7525/j.issn.1006-8023.2025.03.007

References

1
万杰,汪长城,朱建军,等.层析SAR三维成像方法与森林参数反演研究进展[J].遥感学报202428(3):576-590.
WAN J WANG C C ZHU J J.Research progress on tomographic SAR three-dimensional imaging methods and forest parameter inversion[J].National Remote Sensing Bulletin202428(3):576-590.
2
梁锦涛,陈超,孙伟伟,等.长时序Landsat和GEE云平台的杭州湾土地利用/覆被变化时空格局演变[J].遥感学报202327(6):1480-1495.
LIANG J T CHEN C SUN W W,et al.Spatio-temporal land use/cover change dynamics in Hangzhou Bay,China,using long-term Landsat time series and GEE platform[J].National Remote Sensing Bulletin202327(6):1480-1495.
3
王璐,范文义.基于高光谱遥感数据的森林优势树种组识别[J].东北林业大学学报201543(5):134-137.
WANG L FAN W Y.Hyperspectral remote sensing data for identifying dominant forest tree species group[J].Journal of Northeast Forestry University201543(5):134-137.
4
梁顺林,白瑞,陈晓娜,等.2019年中国陆表定量遥感发展综述[J].遥感学报202024(6):618-671.
LIANG S L BAI R CHEN X N,et al.Review of China’s land surface quantitative remote sensing development in 2019[J].National Remote Sensing Bulletin202024(6):618-671.
5
ECKE S STEHR F FREY J.Towards operational UAV-based forest health monitoring:Species identification and crown condition assessment by means of deep learning[J].Computers and Electronics in Agriculture2024219:108785.
6
于航,谭炳香,沈明潭,等.基于机器学习算法的机载高光谱图像优势树种识别[J].自然资源遥感202436(1):118-127.
YU H TAN B X SHEN M T,et al.Identifying predominant tree species based on airborne hyperspectral images using machine learning algorithms[J].Remote Sensing for Natural Resources202436(1):118-127.
7
CHEN D FEI X Y WANG Z.Classifying vegetation types in mountainous areas with fused high spatial resolution images:The case of Huaguo Mountain,Jiangsu,China[J].Sustainability202214 (20):13390.
8
岳巍,李世明,李增元,等.基于多时相Sentinel-2影像和SNIC分割算法的优势树种识别[J].林业科学202258(9):60-69.
YUE W LI S M LI Z Y,et al.Identification of dominant tree species based on multi-temporal Sentinel-2 images and SNIC segmentation algorithm[J].Scientia Silvae Sinicae202258(9):60-69.
9
THAPA B DARLING L CHOI D,et al.Application of multi-temporal satellite imagery for urban tree species identification[J].Urban Forestry & Urban Greening202498:128409.
10
肖庆琳,张加龙,曹军,等.耦合多特征多时相的普洱市优势树种分类研究[J].森林工程202440(2):117-126.
XIAO Q L ZHANG J L CAO J.Research on the classification of dominant tree species in Pu'er city by coupling multiple characteristics and multiple phases[J].Forest Engineering202440(2):117-126.
11
郑奕,王瑶,刘艳.基于高光谱数据季相特征的山地草甸植被分类识别[J].光谱学与光谱分析202242(6):1939-1947.
ZHENG Y WANG Y LIU Y.Study on classification and recognition of mountain meadow vegetation based on seasonal characteristics of hyperspectral data[J].Spectroscopy and Spectral Analysis202242(6):1939-1947.
12
李晶,闫星光,闫萧萧,等.基于GEE云平台的黄河流域植被覆盖度时空变化特征[J].煤炭学报202146(5):1439-1450.
LI J YAN X G YAN X X,et al.Temporal and spatial variation characteristic of vegetation coverage in the Yellow River Basin based on GEE cloud platform[J].Journal of China Coal Society202146(5):1439-1450.
13
梁爽,宫兆宁,赵文吉,等.基于多季相Sentinel-2影像的白洋淀湿地信息提取[J].遥感技术与应用202136(4):777-790.
LIANG S GONG Z N ZHAO W J,et al.Information extraction of Baiyangdian Wetland based on multi-season Sentinel-2 images[J].Remote Sensing Technology and Application202136(4):777-790.
14
邵春晨,杨刚,孙伟伟,等.基于高光谱卫星影像的生长期互花米草指数构建[J].遥感学报202428(3):635-648.
SHAO C C YANG G SUN W W,et al.Construction method of a Spartina alterniflora index based on hyperspectral satellite images[J].National Remote Sensing Bulletin202428(3):635-648.
15
张旭辉,玉素甫江·如素力,仇忠丽,等.基于Sentinel-2时序数据的新疆焉耆盆地农作物遥感识别与评估[J].干旱区地理202447(4):672-683.
ZHANG X H RUSULI Y S F J QIU Z L,et al.Remote sensing identification and assessment of crops in the Yanqi Basin,Xinjiang,China based on Sentinel-2 time series data[J].Arid Land Geography202447(4):672-683.
16
刘畅,王岩,王朝,等.Sentinel-1与Sentinel-2影像联合的黄河三角洲湿地信息提取[J].海洋科学202347(5):2-14.
LIU C WANG Y WANG Z,et al.Extraction of wetland information from Sentinel-1 and Sentinel-2 images in the Yellow River Delta[J].Marine Sciences202347(5):2-14.
17
刘啸添,周蕾,石浩,等.基于多种遥感植被指数、叶绿素荧光与CO2通量数据的温带针阔混交林物候特征对比分析[J].生态学报201838(10):3482-3494.
LIU X T ZHOU L SHI H,et al.Phenological characteristics of temperate coniferous and broad-leaved mixed forests based on multiple remote sensing vegetation indices,chlorophyll fluorescence and CO2 flux data[J].Acta Ecologica Sinica201838(10):3482-3494.
18
SOUZA C M ROBERTS D A COCHRANE M A.Combining spectral and spatial information to map canopy damage from selective logging and forest fires[J].Remote Sensing of Environment200598(2/3):329-343.
19
帅爽,张志,张天,等.结合ZY-1 02D光谱与纹理特征的干旱区植被类型遥感分类[J].农业工程学报202137(21):199-207.
SHUAI S ZHANG Z ZHANG T,et al.Method for classifying vegetation types in arid areas combining spectral and textural features of ZY-102D[J].Transactions of the Chinese Society of Agricultural Engineering202137(21):199-207.
20
廖超明,云子恒,罗恒,等.基于特征优选的喀斯特地区覆被信息提取及精度分析[J].测绘通报2024(2):45-50.
LIAO C M YUN Z H LUO H,et al.Cover information extraction and precision analysis in Karst area based on feature optimization[J].Bulletin of Surveying and Mapping2024(2):45-50.
21
李佳芪,那晓东.基于多季相特征组合的南瓮河湿地信息提取[J].湿地科学与管理202218(6):16-20.
LI J Q NA X D.Information extraction from Nanweng River wetland based on combination of multi-seasonal features[J].Wetland Science and Management202218(6):16-20.
22
刘瑞清,李加林,孙超,等.基于Sentinel-2遥感时间序列植被物候特征的盐城滨海湿地植被分类[J].地理学报202176(7):1680-1692.
LIU R Q LI J L SUN C,et al.Classification of Yancheng coastal wetland vegetation based on vegetation phenological characteristics derived from Sentinel-2 time-series[J].Acta Geographica Sinica202176(7):1680-1692.
23
刘晓亮,王志华,杨晓梅,等.面向自然场景土地覆被分类的遥感物候模式分区[J].地理学报202479(9):2206-2229.
LIU X L WANG Z H YANG X M,et al.Remotely-sensed phenology pattern regionalization for land cover classification of natural scenes:A case study in China[J].Acta Geographica Sinica202479(9):2206-2229.
24
PU R LANDRY S YU Q.Assessing the potential of multi-seasonal high resolution Pléiades satellite imagery for mapping urban tree species[J].International Journal of Applied Earth Observation and Geoinformation201871:144-158.
25
刘灵,张加龙,韩雪莲,等.基于GEE和Sentinel时序影像的优势树种识别研究[J].森林工程202339(1):63-72,81.
LIU L ZHANG J L HAN X L,et al.Dominant species classification based on google earth engine and sentinel time-series data[J].Forest Engineering202339(1):63-72,81.
26
徐凯健,田庆久,徐念旭,等.基于时序NDVI与光谱微分变换的森林优势树种识别[J].光谱学与光谱分析201939(12):3794-3800.
XU K J TIAN Q J XU N X,et al.Classifying forest dominant trees species based on high dimensional time-series NDVI data and differential transform methods[J].Spectroscopy and Spectral Analysis201939(12):3794-3800.
27
宋洁,刘学录.基于多源遥感数据提高山地森林识别精度——以祁连山国家公园肃南县段为例[J].草业学报202130(10):1-14.
SONG J LIU X L.Improving the accuracy of forest identification in mountainous areas from multi-source remote sensing data-the Sunan County section of Qilian Mountains National Park as an example[J].Acta Prataculturae Sinica202130(10):1-14.
28
王宁,田家,田庆久.基于MODIS日地表反射率产品的长时序日分辨率EVI重建方法[J].遥感学报202428(4):969-980.
WANG N TIAN J TIAN Q J.A method for reconstructing long-term daily resolution EVIs based on MODIS daily surface reflectance products[J].National Remote Sensing Bulletin202428(4):969-980.
29
吕林,易文彬,崔丹丹,等.基于Google Earth Engine遥感大数据云平台的盐城盐沼植被精细分类研究[J].海洋通报202443(1):114-126.
LYU L, YI W B CUI D D,et al.Fine classification of saltmarsh vegetation based on Google Earth Engine in Yancheng,China[J].Marine Science Bulletin202443(1):114-126.
30
ZHU Z GALLANT L A WOODCOCK E C,et al.Optimizing selection of training and auxiliary data for operational land cover classification for the LCMAP initiative[J].ISPRS Journal of Photogrammetry and Remote Sensing2016122:206-221.
31
蓝斐芜.基于时序遥感的沼泽植被-水文变化监测及其时空耦合关系研究[D].桂林:桂林理工大学,2022.
LAN F W.Monitoring marsh vegetation-hydrology changes based on time-series remote sensing and their spatio-temporal coupling relationship[D].Guilin:Guilin University of Technology,2022.
32
张炳华,张镱锂,谷昌军,等.基于随机森林与特征选择的藏东南土地覆被分类方法及精度评价[J].地理科学202343(3):388-397.
ZHANG B H ZHANG Y L GU C J,et al.Land cover classification based on random forest and feature optimism in the Southeast Qinghai-Tibet Plateau[J].Scientia Geographica Sinica202343(3):388-397.
33
WANG Y JIN S DARDANELLI G.Vegetation classification and evaluation of Yancheng coastal wetlands based on random forest algorithm from Sentinel-2 images[J].Remote Sensing202416(7):1124.
34
薛朝辉,钱思羽.融合Landsat 8与Sentinel-2数据的红树林物候信息提取与分类[J].遥感学报202226(6):1121-1142.
XUE Z H QIAN S Y.Fusion of Landsat 8 and Sentinel-2 data for mangrove phenology information extraction and classification[J].National Remote Sensing Bulletin202226(6):1121-1142.
35
孟凤,朱庆伟,董士伟,等.基于多季相分形特征的Landsat 8 OLI影像耕地信息提取方法[J].农业机械学报202455(6):168-177.
MENG F ZHU Q W DONG S W,et al.Cropland information extraction method of Landsat 8 OLI images based on multi-seasonal fractal features[J].Transactions of the Chinese Society for Agricultural Machinery202455(6):168-177.
36
吴喜芳,化仕浩,张莎,等.基于多物候特征指数的冬小麦分布信息提取[J].农业机械学报202354(12):207-216.
WU X F HUA S H ZHANG S,et al.Extraction of winter wheat distribution information based on multi-phenological feature indices derived from Sentinel-2 data[J].Transactions of the Chinese Society for Agricultural Machinery202354(12):207-216.

Comments

PDF(4299 KB)

Accesses

Citation

Detail

Sections
Recommended

/