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Assessing the Potential of Multi-Seasonal High Resolution Pléiades Satellite Imagery for Mapping Urban Tree Species

机译:评估用于绘制城市树种的多季节高分辨率P星卫星图像的潜力

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The multi-season Pléiades image data were compared and analyzed for their capabilities of classifying and mapping the seven urban forest tree species in the City of Tampa, FL, USA to understand the seasonal effect on tree species classification accuracy. The seven species and groups included sand live oak (Quercus geminata), laurel oak (Q. laurifolia), live oak (Q. virginiana), pine (species group), palm (species group), camphor (Cinnamomum camphora), and magnolia (Magnolia grandiflora). A multi-level classification system was adopted to classify image objects of the tree species. Shade image objects (IOs) were spectrally normalized to similar sunlit IOs, and the tree species fractions were extracted from the seasonal images using a spectral unmixing approach and used as additional features. Using selected features extracted from the five individual season and the two dry-wet season combined Pléiades images, tree species were identified and mapped using a random Forest, support vector machines and a linear discriminant analysis classifiers. The experimental results indicate significantly improved tree species mapping accuracies using late spring season (April) image compared to all other seasonal images (p<;0.01), and combined dry-wet season images performed even better. Results suggest a significant seasonal effect on tree species classification. The novel significance of this study was to demonstrate the potential of multi-season Pléiades imagery in improving urban tree species mapping. Therefore, in practice, it is important to choose appropriate seasonal remote sensing data for mapping tree species.
机译:比较和分析了多季P图像数据对美国佛罗里达州坦帕市的七个城市林木树种进行分类和制图的能力,以了解季节对树种分类准确性的影响。这七个物种和组包括沙生橡树(Quercus geminata),月桂树橡树(Q. laurifolia),橡树橡树(Q. virginiana),松树(树种),棕榈树(树种),樟树(Cinnamomum camphora)和木兰。 (木兰)。采用了多级分类系统对树种的图像对象进行分类。将树荫图像对象(IOs)光谱归一化为类似的光照IOs,并使用光谱分解方法从季节性图像中提取树木物种分数,并将其用作附加特征。使用从五个单独季节和两个干湿季节结合的l病图像中提取的选定特征,使用随机森林,支持向量机和线性判别分析分类器对树木物种进行识别和制图。实验结果表明,与所有其他季节性图像(p <; 0.01)相比,使用春末(4月)图像对树种的制图准确性有了显着提高,并且组合的干湿季图像表现得更好。结果表明对树木种类分类有明显的季节性影响。这项研究的新颖意义在于证明多季节P宿星影像在改善城市树种制图方面的潜力。因此,在实践中,重要的是选择适当的季节性遥感数据来绘制树种。

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