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首页> 外文期刊>Journal of Geography and Geology >Comparing Hyperspectral and Multispectral Imagery for Land Classification of the Lower Don River, Toronto
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Comparing Hyperspectral and Multispectral Imagery for Land Classification of the Lower Don River, Toronto

机译:多伦多下唐河土地分类的高光谱和多光谱影像比较

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摘要

Urban greenspace is important for the health of cities. Up-to-date databases and information are vital to maintain and monitor growth in cities. During the last decade, advances in spaceborne hyperspectral sensors have resulted in some advantages being gained over multispectral sensors for land cover monitoring (due to increased spectral resolution). The objective of this research was to compare Earth Observing-1 (EO-1) Hyperion hyperspectral data to Landsat 5 Thematic Mapper (TM) and Satellite Probatoire d’Observation de la Terre (SPOT) 5 multispectral data for land cover classification in a dense urban landscape. For comparative analysis, orthorectified aerial imagery provided by the Toronto and Region Conservation Authority (TRCA) was used as ground truth data for accuracy assessment. This study utilized conventional and segmented principal components (CPCA and SPCA) for data compression on the Hyperion imagery, and used principal components analysis (PCA) as a visual enhancement technique for multispectral imagery. Image processing including the generation of the normalized difference vegetation index (NDVI), and mean texture was also performed for both Landsat and SPOT sensors. Unsupervised iterative self-organizing data analysis (ISODATA) classification procedures were performed on all images to produce land cover classification maps for a portion of the Lower Don River in Toronto, Ontario, Canada. Experiments conducted in this research demonstrated that hyperspectral imagery produced a higher overall accuracy (5-6% better) than multispectral data with the same resolution for defining vegetation cover. In addition, SPOT generated greater accuracy results than Landsat or Hyperion for vegetation classes. It was found that conventional Hyperion and segmented Hyperion methods outperformed the Landsat 5 TM sensor for vegetation differences (for tree canopy and open green spaces).
机译:城市绿地对于城市的健康至关重要。最新的数据库和信息对于维持和监控城市的增长至关重要。在过去的十年中,星载高光谱传感器的进步已经带来了用于土地覆盖监测的多光谱传感器的优势(由于光谱分辨率的提高)。这项研究的目的是比较地球观测1(EO-1)的Hyperion高光谱数据与Landsat 5专题测绘仪(TM)和卫星地球观测台(SPOT)5多光谱数据在密集区域内的土地覆盖分类城市景观。为了进行比较分析,将多伦多和地区保护局(TRCA)提供的经过矫正的航空影像用作地面真相数据,以进行准确性评估。这项研究利用常规和分段主成分(CPCA和SPCA)对Hyperion影像进行数据压缩,并将主成分分析(PCA)用作多光谱影像的视觉增强技术。还对Landsat和SPOT传感器都进行了包括标准化归一化植被指数(NDVI)和平均纹理的生成在内的图像处理。对所有图像执行无监督的迭代自组织数据分析(ISODATA)分类程序,以生成加拿大安大略省多伦多的下唐河的一部分的土地覆盖分类图。在这项研究中进行的实验表明,与具有相同分辨率的植被覆盖度定义相比,高光谱图像产生的总体准确性要高于多光谱数据(提高了5-6%)。另外,对于植被类别,SPOT产生的精度结果高于Landsat或Hyperion。结果发现,传统的Hyperion和分段Hyperion方法在植被差异方面(对于树冠和开阔的绿色空间)优于Landsat 5 TM传感器。

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