帮助 关于我们

返回检索结果

分层分类和多指标结合的西北农牧交错带植被信息提取
Vegetation information extraction in farming-pastoral ectones in northwest China using hierarchical classification and multiple indices

查看参考文献29篇

何鸿杰 1   穆亚超 1   魏宝成 1   杜婷 1   薛晓玉 1   颉耀文 1,2  
文摘 参照《中国植被》中的植被分类体系,结合野外考察结果,建立了适合中国西北农牧交错带的植被分类体系。以覆盖研究区的多幅Landsat影像为基础,按“分层分类,逐层验证”的思路,实现了对研究区植被信息的提取。提取时,先利用完全约束的最小二乘模型对遥感影像进行混合像元分解,将整个研究区划分为植被区和非植被区;在植被区,基于光谱特征、纹理特征和地形特征,构建CART决策树,获得了乔木林、灌丛和草原等7种主要植被型组;在植被型组内,基于不同植被类型NDVI的季节差异特征,构建NDVI差值比值指数(NDVI_DR) ,将乔木林和灌丛区分为常绿和落叶植被型,使用温度植被干旱指数(TVDI) ,将草原划分为荒漠草原、典型草原和草甸草原3种类型,从而得到各个植被型的空间分布范围。经验证,最终分类的总体精度能达到79.51%,kappa系数为0.773。本文所采用的分类方法充分利用了遥感数据既有的光谱信息和纹理信息,同时辅以地形信息。实践结果表明,分层分类和多种指标相结合的方法可以有效实现对影像跨幅的、以复杂镶嵌结构为主要特征的农牧交错带植被信息提取,精度较高,技术可行。
其他语种文摘 Based on Chinese vegetation classification criteria described in the book“Chinese Vegetation”, the vegetation classification system suitable for the farming-pastoral ectones in Northwestern China was established with the field investigation. Using the Landsat images, the terrain data and field data of the study area, the vegetation information in the study area was refined according to the implementation strategy as“hierarchical classification and layer by layer verification”. During the extraction process, the mixed pixels decomposition of preprocessed remotely sensed images was performed by using the fully constrained least-squares model,and the vegetation fraction of the study area was obtained. We classified the study area into vegetation area where the vegetation fraction is larger than 5% and non-vegetation area where the vegetation fraction is less than 5%. In the vegetation area, it was further classified into 7 main vegetation type groups which include the tree group, shrub group and grassland group using the CART decision tree based on the spectral characteristic, texture characteristic (Mean) and terrain characteristic (Digital Elevation Model,DEM) . Each vegetation type group was again further classified into different sub types based on the refined indexes. The tree group and shrub group were categorized into evergreen vegetation type and deciduous vegetation type based on the NDVI difference ratio index which was established using the seasonal variations of their NDVIs of different plants. The grassland type group was categorized into desert grassland, the typical grassland and meadow grassland using the temperature vegetation dryness index (TVDI) . After this step, the spatial distribution of each vegetation type was obtained. It was proved that the overall accuracy of the final classification can reach 79.51% and the Kappa coefficient is 0.773. The classification method used in this study makes full use of the spectral information and texture information of the remotely sensed images,and cooperates with terrain information. Experimental result shows that the method of using hierarchical classification and multiple indexes could extract the vegetation information efficiently from the images of the farming-pastoral ectones with high accuracy. The classification result in this area provides the basic data for the further research on the relationship between surface hydrothermal process and land cover change,especially vegetation cover change. Meanwhile, it provides reference for the conservation of vegetation area and ecological environment construction in this area.
来源 干旱区地理 ,2019,42(2):332-340 【核心库】
DOI 10.12118/j.issn.1000-6060.2019.02.13
关键词 农牧交错区 ; 植被信息提取 ; CART决策树 ; 谱间关系法 ; 差值比值指数(NDVI_DR) ; 温度植被干旱指数(TVDI)
地址

1. 兰州大学资源环境学院, 甘肃, 兰州, 730000  

2. 兰州大学, 西部环境教育部重点实验室, 甘肃, 兰州, 730000

语种 中文
文献类型 研究性论文
ISSN 1000-6060
学科 植物学
基金 国家自然科学基金项目
文献收藏号 CSCD:6468058

参考文献 共 29 共2页

1.  李秋月. 气候变化对我国北方农牧交错带空间位移的影响. 干旱区资源与环境,2012,26(10):1-6 被引 13    
2.  贾科利. 基于遥感、GIS的陕北农牧交错带土地利用与生态环境效应研究,2007 被引 7    
3.  刘强. 基于RS和GIS的水土流失综合评价方法---以安吉县为例. 浙江水利科技,2016,44(3):31-34 被引 1    
4.  刘炜. 土地利用/覆被变化信息遥感图像自动分类识别与提取方法研究,2012 被引 4    
5.  Liu T. Mapping vegetation in an urban area with stratified classification and multiple endmember spectral mixture analysis. Remote Sensing of Environment,2013,133(12):251-264 被引 9    
6.  于文婧. 基于HJ-CCD数据和决策树法的干旱半干旱灌区土地利用分类. 农业工程学报,2016,32(2):212-219 被引 16    
7.  张熙. 基于决策树的漓江上游土地覆盖分类. 测绘科学,2016,41(3):100-103 被引 1    
8.  马骊驰. 基于改进型决策树遥感分类的土地利用变化研究. 地理空间信息,2016,14(7):12-16 被引 3    
9.  王晓学. 利用多信息源提高半干旱地区TM影像的森林类型制图精度:以北京西部山区为例. 自然资源学报,2017,32(7):1217-1228 被引 4    
10.  方朝阳. 鄱阳湖南矶湿地景观信息高分辨率遥感提取. 地球信息科学学报,2016,18(6):847-856 被引 10    
11.  Ai-Bassam B F. Land use/cover change analysis using remote sensing data: A case study,Zhengzhou Area,Henan Province,China. Al-Khawarizmi Engineering Journal,2010,6(2):72-82 被引 1    
12.  裴欢. 基于地物光谱特征和空间特征的干旱区绿洲土地分类. 地理科学,2013,33(11):1395-1399 被引 3    
13.  Li W. Study on classification for vegetation spectral feature extraction method based on decision tree algorithm. Image Analysis and Signal Processing (IASP),2011 International Conference on IEEE,2011:665-669 被引 1    
14.  Khatami R. A meta-analysis of remote sensing research on supervised pixel-based land-cover image classification processes: General guidelines for practitioners and future research. Remote Sensing of Environment,2016,177:89-100 被引 20    
15.  侯智庭. 时间序列遥感数据植被分类中的特征选择方法研究,2017 被引 1    
16.  靳彦华. 水浇地与旱地春小麦冠层高光谱反射特征比较. 国土资源遥感,2014,26(3):24-30 被引 2    
17.  雷光斌. 基于阈值法的山区森林常绿、落叶特征遥感自动识别方法——以贡嘎山地区为例. 生态学报,2014,34(24):7210-7221 被引 15    
18.  中国植被编委会. 中国植被,1980 被引 29    
19.  Wu J. A research on extracting information of the arid regions'vegetation coverage using improved model of spectral mixture analysis. Multimedia Technology (ICMT), 2010 International Conference on IEEE,2010:1-5 被引 1    
20.  刘欣. 利用CART算法从LandSat8卫星影像提取居民地的研究,2015 被引 2    
引证文献 3

1 张俊瑶 基于垂直带谱的太白山区山地植被遥感信息提取 地球信息科学学报,2019,21(8):1284-1294
被引 10

2 张萍 大理苍山东西坡植被的垂直分布格局 浙江农林大学学报,2022,39(1):68-75
被引 2

显示所有3篇文献

论文科学数据集
PlumX Metrics
相关文献

 作者相关
 关键词相关
 参考文献相关

版权所有 ©2008 中国科学院文献情报中心 制作维护:中国科学院文献情报中心
地址:北京中关村北四环西路33号 邮政编码:100190 联系电话:(010)82627496 E-mail:cscd@mail.las.ac.cn 京ICP备05002861号-4 | 京公网安备11010802043238号