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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Learning from data: A post classification method for annual land cover analysis in urban areas
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Learning from data: A post classification method for annual land cover analysis in urban areas

机译:从数据学习:城市地区年土覆盖分析的后分类方法

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摘要

Annual analyses of land cover dynamics in urban areas provide a thorough understanding of the urbanization effects on environment and valuable information for the improvement of urban growth modeling. However, most current studies focus on major land cover changes, such as urbanization and vegetation loss. The most feasible way to evaluate the complex interactions among different land cover types is the post-classification change detection, but the temporal inconsistency in the time series of land cover maps impedes the high-frequency and long-term analyses. This study proposed a spatio-temporal land cover filter (STLCF) to remove the illogical land cover change events in the time series of land cover maps, and analyzed the annual land cover dynamics in urban areas. The knowledge of illogical land cover change events was 'learned' from the land cover maps through the spatio-temporal transition probability matrix, instead of experts' knowledge. The illogical change was modified with the land cover of the maximum probability calculated from the naive Bayesian equation. The STLCF was tested in Wuhan, a typical densely urbanized Chinese city. The annual land cover maps from 2000 to 2013 were derived from multi-date Landsat images using the Decision Tree (DT) classifier. Results showed that the STLCF improved the mean overall accuracy of annual change detection by about 6%. Additionally, the amount of land cover trajectories with unrealistically frequent changes was significantly decreased. During the study period, 7.86% of the pixels experienced one land cover change, and about 0.57% of the pixels experienced land cover changes more than once. The annual analyses demonstrated the non-linear increasing trend in urbanization as well as the corresponding trend in vegetation loss in the study area. We also found the conversion from built-up areas to vegetation near rivers and lakes and in the reserves and rural areas, mainly caused by the restoration of built-up areas to the park or green belt/wedges along rivers and new roads in the metropolitan areas, and to the cropland and woods in the rural areas. Results of this study showed the importance of the spatio-temporal consistency check with knowledge derived from land cover maps of the study area, which facilitates the annual analyses of major and subtle land cover dynamics in urban areas.
机译:城市地区土地覆盖动态的年度分析对环境和有价值信息的全面了解,为改善城市增长建模。然而,大多数目前的研究侧重于主要土地覆盖变化,如城市化和植被损失。评估不同地覆盖类型之间的复杂相互作用的最可行方法是分类后变化检测,但是陆地覆盖地图的时间序列中的时间不一致阻碍了高频和长期分析。本研究提出了一种时空陆地覆盖过滤器(STLCF),以删除陆地覆盖地图中的时间序列中的不合逻辑的土地覆盖事件,并分析了城市地区的年度土地覆盖动态。通过时空过渡概率矩阵,而不是专家的知识,从陆地覆盖地图中“学习”知识。利用朴素贝叶斯方程计算的最大概率的土地覆盖来修改不合逻辑的变化。 STLCF在武汉测试了一个典型的致力城市化的中国城市。使用决策树(DT)分类器,从2000年到2013年的年度覆盖地图从多日山顶图像中得出。结果表明,STLCF将年度变化检测的平均整体精度提高了约6%。此外,具有不切实际的频繁变化的土地覆盖轨迹的数量显着下降。在研究期间,7.86%的像素经历了一个土地覆盖变化,并且约0.57%的像素经历的土地覆盖范围多次变化。年度分析证明了城市化的非线性增加趋势以及研究区植被损失的相应趋势。我们还发现从内置区域转换为河流和湖泊附近的植被以及储备和农村地区,主要是由于恢复到公园或绿色皮带/沿着大都市的新道路楔形的建筑区域地区,以及农村地区的农田和伍兹。该研究的结果表明,与研究区的土地覆盖地图的知识表明,促进了陆地覆盖地图的知识的重要性,这促进了城市地区的主要和微妙地覆盖动态的年度分析。

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