首页> 外文会议>Envisat and ERS Symposium >LAND COVER/LAND USE CLASSIFICATION IN A SEMIARID ENVIRONMENT IN EAST AFRICA USING MULTI-TEMPORAL ALTERNATING POLARISATION ENVISAT ASAR DATA
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LAND COVER/LAND USE CLASSIFICATION IN A SEMIARID ENVIRONMENT IN EAST AFRICA USING MULTI-TEMPORAL ALTERNATING POLARISATION ENVISAT ASAR DATA

机译:利用多时间交替极化Envisat ASAR数据,在东非的半干旱环境中陆地覆盖/土地使用分类

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In central Kenya, in the ecological transition zone from semi-humid to semi-arid, climatic and human induced land cover changes have an immense impact on the ecosystem. Therefore, investigations were made to analyse the potential to separate 10 detailed land use/land cover classes in this area from multitemporal ENVISAT ASAR data. Besides mean, different texture measures like variance, coefficient of variation and semivariogram were calculated to generate additional input layers for a classification procedure. A quantitative separability criterion was used to determine the contribution of each measure to the overall class separability and for specific classes. The results show that the contribution of the different texture measures is class dependent. However, multitemporality provides most class discrimination. While the different polarizations individually do not show a distinct influence on one specific class, still an overall better separability is obtained when using both polarization images of one date.
机译:在肯尼亚中部,在半潮湿于半干旱的生态过渡区,气候和人类诱导的土地覆盖变化对生态系统产生了巨大的影响。因此,研究了从多立体型Envisat ASAR数据中分离在该地区的10个详细土地使用/陆地覆盖课程的潜力。除了平均值外,还计算不同的纹理测量,如方差,变异系数和半啮图,以产生用于分类过程的附加输入层。定量可分离性标准用于确定每种措施对整体阶级可分离性和特定类别的贡献。结果表明,不同纹理措施的贡献依赖于课程。然而,多态度提供了大多数阶级歧视。虽然单独的不同的偏振不显示对一个特定类别的不同影响,但是当使用一个日期的两个极化图像时,仍然可以获得更好的可分离性。

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