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面向对象的喀斯特地区石漠化遥感信息提取研究——以贵州省大方地区为例

周迪 倪忠云 杨振宇

周迪, 倪忠云, 杨振宇, 2018. 面向对象的喀斯特地区石漠化遥感信息提取研究——以贵州省大方地区为例. 地质力学学报, 24 (2): 263-273. DOI: 10.12090/j.issn.1006-6616.2018.24.02.028
引用本文: 周迪, 倪忠云, 杨振宇, 2018. 面向对象的喀斯特地区石漠化遥感信息提取研究——以贵州省大方地区为例. 地质力学学报, 24 (2): 263-273. DOI: 10.12090/j.issn.1006-6616.2018.24.02.028
ZHOU Di, NI Zhongyun, YANG Zhenyu, 2018. OBJECT-ORIENTED REMOTE SENSING INFORMATION EXTRACTION METHOD FOR ROCKY DESERTIFICATION IN KARST AREA-A CASE STUDY OF DAFANG COUNTY, GUIZHOU. Journal of Geomechanics, 24 (2): 263-273. DOI: 10.12090/j.issn.1006-6616.2018.24.02.028
Citation: ZHOU Di, NI Zhongyun, YANG Zhenyu, 2018. OBJECT-ORIENTED REMOTE SENSING INFORMATION EXTRACTION METHOD FOR ROCKY DESERTIFICATION IN KARST AREA-A CASE STUDY OF DAFANG COUNTY, GUIZHOU. Journal of Geomechanics, 24 (2): 263-273. DOI: 10.12090/j.issn.1006-6616.2018.24.02.028

面向对象的喀斯特地区石漠化遥感信息提取研究——以贵州省大方地区为例

doi: 10.12090/j.issn.1006-6616.2018.24.02.028
基金项目: 

四川省教育厅项目 16ZA0080

2016年成都理工大学校级教学改革及课程建设项目 11100-16z056919

详细信息
    作者简介:

    周迪(1994-), 女, 在读硕士, 研究方向:InSAR技术监测地面沉降。E-mail:zhoudi_cnu@163.com

    通讯作者:

    倪忠云(1982-), 女, 博士, 讲师, 从事生态环境遥感和遥感地质等研究。E-mail:theoneyun@gmail.com

  • 中图分类号: TP79;P391.5

OBJECT-ORIENTED REMOTE SENSING INFORMATION EXTRACTION METHOD FOR ROCKY DESERTIFICATION IN KARST AREA-A CASE STUDY OF DAFANG COUNTY, GUIZHOU

  • 摘要: 针对现有基于像素的监督和非监督分类方法在地质环境复杂、地形起伏较大、阴影明显的喀斯特石漠化地区难以满足石漠化信息提取精度要求的问题,采用基于纹理特征数据和地形数据辅助面向对象方法进行喀斯特地区石漠化信息的提取。该方法首先依据石漠化分布在TM/ETM+影像面积大小不均匀的特征,利用纹理和地形因子计算最优分割参数进行多尺度分割;然后根据植被覆盖率、岩石裸露率以及坡度因子构建石漠化分级指标;最后参照石漠化分级标准、光谱信息以及纹理特征等建立的分类规则提取喀斯特地区石漠化信息。选取贵州省石漠化严重的大方县时序TM/ETM+影像进行石漠化信息提取试验,结果表明:与基于像素的监督分类和非监督分类方法相比,基于面向对象的分类可以有效地减少因复杂地形导致石漠化信息提取结果"椒盐化"现象,提取精度明显优于基于像素的监督分类和非监督分类方法。

     

  • 图  1  研究区位置图

    Figure  1.  Location map of the study area

    图  2  石漠化遥感影像信息提取流程图

    Figure  2.  Flow chart of rocky desertification remote sensing image information extraction

    图  3  纹理特征数据

    Figure  3.  Texture feature data

    图  4  坡度和NDVI信息提取结果

    Figure  4.  Results of gradient and NDVI information extraction

    图  5  均值方差曲线

    Figure  5.  Mean variance curve

    图  6  分割结果对比图

    a—纹理特征数据和地形数据未参与分割;b—纹理特征数据和地形数据参与分割

    Figure  6.  Comparison charts of segmentation results

    图  7  研究区石漠化信息提取结果对比图

    Figure  7.  Comparison of information extraction results of rocky desertification in study area

    图  8  研究区石漠化分布图

    Figure  8.  Distribution of rocky desertification in study area

    图  9  实地验证区域图

    Figure  9.  Maps of field verification

    图  10  实地验证石漠化区域照片

    Figure  10.  Pictures of field verification in desertification areas

    表  1  分割参数的设置

    Table  1.   Settings of segmentation parameters

    分割层次 波段选择 分割尺度 异质性因子
    光谱权重 形状权重 光滑度 紧密度
    Level1 741+4纹理 20 0.7 0.3 0.5 0.4
    Level2 741+4纹理 50 0.7 0.3 0.5 0.4
    Level3 741+4纹理 100 0.7 0.3 0.5 0.4
    下载: 导出CSV

    表  2  石漠化等级划分标准[30]

    Table  2.   Grading standards of rock desertification [30]

    强度等级 坡度/% 岩石裸露率/% 植被覆盖率/% 利用价值
    无石漠化 < 15 < 10 >70 宜农宜林牧
    微度石漠化 >15 10~30 50~70 宜林牧
    轻度石漠化 >18 30~50 35~50 临界宜林牧
    中度石漠化 >22 50~70 10~30 难利用地
    重度石漠化 >25 >70 < 10 无利用价值
    下载: 导出CSV

    表  3  面向对象的喀斯特地区石漠化遥感信息提取规则

    Table  3.   Rules of object-oriented remote sensing information extraction method for rocky desertification in Karst area

    分割层次 分割尺度 提取信息 规则(模糊分类定义的成员函数)
    Level1 20 水体
    喀斯特地区非
    喀斯特地区
    200≤Ratio(B4)≤800, Brightness < 180, length/width > 3.28, Mean(con) < 0.34;
    Ratio(B4)≥800, Ratio(B2)≤1000, NDVI≥0.405, Shape Index > 0.62;
    NDVI < 0.405, Ratio(B2)>1000, Mean(con) < 5;
    Level2 50 无石漠化
    有石漠化
    NDVI≥0.525, Brightness≤1300, length/width > 1.5, Mean(slope) < 15;
    NDVI < 0.525, Brightness>1300, Stdv(B2)+Stdv(B3)+Stdv(B4) < 20, 15 < Mean(slope) < 45;
    Level3 100 中度石漠化
    轻度石漠化
    重度石漠化
    微度石漠化
    Ratio(B2) < 4.45, Stdv(B4) < 12, NDVI < -0.25, Mean(slope)>22;
    200 < Brightness < 400, Mean(slope)>18, 1.5 < Mean(Ent) < 2.6;
    Ratio(B3) < 2.26, Mean(slope)>25, Mean(Ent)>2.6, Mean(con)>5;
    0.25 < Ratio(B7) < 0.31, Mean(slope)>15, Mean(con)>7;
    注:Brightness为对象平均的多光谱灰度值,length/width为对象的长宽比,Stdv标准差,Ratio为比率,Mean(con)为对比度均值,Mean(Ent)为熵均值,Mean(slope)为坡度均值,NDVI=(Nir-red)/(Nir+red),Shape Index=e/4√A(e为边长,A为面积),B2、B3、B4、B7是TM/ETM+多光谱影像的波段。
    下载: 导出CSV

    表  4  1988—2016年大方地区喀斯特石漠化面积

    Table  4.   Area of karst rocky desertification in Dafang from 1988 to 2016

    1988年 2002年 2016年
    面积/km2 比例/% 面积/km2 比例/% 面积/km2 比例/%
    微度石漠化区 139.27 5.07 89.67 3.27 77.64 2.83
    轻度石漠化区 78.5 2.86 135.8 4.95 144.43 5.26
    中度石漠化区 74.15 2.70 66.35 2.42 61.91 2.25
    重度石漠化区 37.28 1.36 30.6 1.11 19.78 0.72
    水系 73.81 2.69 75.39 2.75 74.24 2.70
    无石漠化区 1746.29 63.59 1751.49 63.78 1771.3 64.50
    非喀斯特地层区 596.7 21.73 596.7 21.73 596.7 21.73
    总计 2746 100.00 2746 100.00 2746 100.00
    下载: 导出CSV

    表  5  分类方法精度对比表

    Table  5.   Comparison of the accuracy of each method

    方法 监督分类 非监督分类 面向对象分类
    年份 1988年 2002年 2016年 1988年 2002年 2016年 1988年 2002年 2016年
    总体精度 72.15% 78.81% 76.43% 62.50% 63.25% 72.90% 91.45% 93.56% 95.31%
    Kappa系数 0.65 0.71 0.68 0.54 0.55 0.58 0.9 0.92 0.94
    下载: 导出CSV
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出版历程
  • 收稿日期:  2017-09-29
  • 修回日期:  2018-02-16
  • 刊出日期:  2018-04-28

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