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首页> 外文期刊>Journal of Geographic Information System >Assessing the Utility of Sentinel-1 C Band Synthetic Aperture Radar Imagery for Land Use Land Cover Classification in a Tropical Coastal Systems When Compared with Landsat 8
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Assessing the Utility of Sentinel-1 C Band Synthetic Aperture Radar Imagery for Land Use Land Cover Classification in a Tropical Coastal Systems When Compared with Landsat 8

机译:与Landsat 8相比,评估Sentinel-1 C波段合成孔径雷达影像在热带沿海系统土地利用分类中的实用性

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Cloud cover constitutes a major obstacle to land cover classification in the humid tropical regions when using optical remote sensing such as Landsat imagery. The advent of freely available Sentinel-1 C band synthetic aperture radar (SAR) imagery offers new opportunities for land cover classification in frequently cloud covered environments. In this study, we investigated the utility of Sentinel-1 for extracting land use land cover (LULC) information in the coastal low lying strip of Douala, Cameroon when compared with Landsat enhanced thematic mapper (TM). We also assessed the potential of integrating Sentinel-1 and Landsat. The major LULC classes in the region included water, settlement, bare ground, dark mangroves, green mangroves, swampy vegetation, rubber, coastal forest and other vegetation and palms. Textural variables including mean, correlation, contrast and entropy were derived from the Sentinel-1 C band. Various conventional image processing techniques and the support vector machine (SVM) algorithm were applied. Only four land cover classes (settlement, water, mangroves and other vegetation and rubber) could be calibrated and validated using SAR imagery due to speckles. The Sentinel-1 only classification yielded a lower overall classification accuracy (67.65% when compared to all Landsat bands (88.7%)). The integrated Sentinel-1 and Landsat data showed no significant differences in overall accuracy assessment (88.71% and 88.59%, respectively). The three best spectral bands (5, 6, 7) of Landsat imagery yielded the highest overall accuracy assessment (91.96%). in the study. These results demonstrate a lower potential of Sentinel-1 for land cover classification in the Douala estuary when compared with cloud free Landsat images. However, comparable results were obtained when only broad classes were considered.
机译:当使用光学遥感技术(例如Landsat影像)时,云层覆盖是潮湿热带地区土地覆盖分类的主要障碍。免费提供的Sentinel-1 C波段合成孔径雷达(SAR)图像的出现为经常覆盖云的环境中的土地覆盖分类提供了新的机会。在这项研究中,与Landsat增强型专题制图器(TM)相比,我们研究了Sentinel-1在提取喀麦隆杜阿拉沿海低洼地带土地利用土地覆盖(LULC)信息方面的实用性。我们还评估了整合Sentinel-1和Landsat的潜力。该地区的主要土地利用变化和林业类别包括水,定居点,裸露的土地,深色红树林,绿色红树林,沼泽植被,橡胶,沿海森林以及其他植被和棕榈。纹理变量包括均值,相关性,对比度和熵,这些变量来自Sentinel-1 C波段。应用了各种常规图像处理技术和支持向量机(SVM)算法。由于斑点的影响,只能使用SAR图像对四种土地覆盖类别(定居,水,红树林以及其他植被和橡胶)进行校准和验证。仅Sentinel-1分类产生了较低的总体分类准确性(与所有Landsat波段(88.7%)相比)为67.65%。综合的Sentinel-1和Landsat数据显示总体准确性评估没有显着差异(分别为88.71%和88.59%)。 Landsat影像的三个最佳光谱带(5、6、7)产生了最高的整体准确性评估(91.96%)。在研究中。这些结果表明,与无云Landsat图像相比,Sentinel-1在杜阿拉河口进行土地覆盖分类的潜力较低。但是,仅考虑广泛的类别时,可获得可比的结果。

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