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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Land cover and land use change analysis using multi-spatial resolution data and object-based image analysis
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Land cover and land use change analysis using multi-spatial resolution data and object-based image analysis

机译:使用多空间分辨率数据和基于对象的图像分析的陆地覆盖和土地利用变化分析

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摘要

Remote sensing data and techniques are reliable tools for monitoring and studying urban land cover and land use (LCLU) change. Fine spatial resolution (FRes) commercial satellite image in conjunction with geographic object based image change analysis (GEOBICA) methods have been used to generate detailed and accurate urban LCLU maps. The integration of a backdating approach improves LCLU change classification results for the first date of a bi-temporal image sequences. Conversely, moderate spatial resolution satellite images such as those from Landsat sensors may not allow for detailed urban land use and land cover mapping. The objective of this study is to test a new bi-temporal change identification approach that integrates image classification of fine spatial resolution satellite imagery at time-2 and moderate spatial resolution satellite imagery (Landsat) at time-1, in a backdating and GEOBICA framework for mapping urban land use change. We compare the results from this approach to those of a GEOBICA approach based on fine spatial resolution imagery in both periods. The overall accuracy of the time-1 Landsat image classification is 0.82 and that of the fine spatial resolution image is 0.87. Moreover, the overall accuracy of the areal change data estimated from the pixel-wise spatial overlay of bitemporal FRes LCLU maps is 0.80 while that from overlaying a time-2 FRes-generated map to that from a Landsat time-1 image is 0.81. The proposed method can be used in areas that lack FRes data due to limited coverage in the early 2000s.
机译:遥感数据和技术是监控和研究城市陆地覆盖和土地利用(LCLU)变化的可靠工具。精细的空间分辨率(FRES)商业卫星图像与基于地理对象的图像变化分析(Geobica)方法已经用于生成详细和准确的城市LCLU地图。回溯方法的集成改善了双时效图像序列的第一日期的LCLU变化分类结果。相反,中等空间分辨率卫星图像,例如来自Landsat传感器的卫星图像可能不允许详细的城市土地使用和陆地覆盖映射。本研究的目的是测试一种新的双颞改变识别方法,该方法在时间-2和狼人框架中在时间-2和中等空间分辨率卫星图像(Landsat)的时间-2和中等空间分辨率图像(Landsat)中集成了微量空间分辨率图像的图像分类用于映射城市土地利用变化。我们将这种方法的结果与两个时期的精细空间分辨率图像的Geobica方法的结果进行比较。时间-1 Landsat图像分类的整体精度为0.82,细空间分辨率图像的整体精度为0.87。此外,从比特FRCER LCLU地图的像素天空空间覆盖层估计的区域变化数据的总体精度为0.80,而从覆盖时间2 fres生成的映射到来自Landsat时间1图像的时间为0.81。该方法可用于由于2000年代初期由于有限的覆盖率而缺乏FRES数据的区域。

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