A'/> Mapping urban tree species using integrated airborne hyperspectral and LiDAR remote sensing data
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Mapping urban tree species using integrated airborne hyperspectral and LiDAR remote sensing data

机译:使用集成的空中高光谱和LIDAR遥感数据映射城市树种

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Abstract Mapping tree species within urban areas is essential for sustainable urban planning as well as to improve our understanding of the role of urban vegetation as an ecological service. Urban trees contribute significantly in mitigating the urban heat island effect and supporting biodiversity. However, accurate and up-to-date mapping of urban tree species is difficult because of the time-consuming nature of field sampling, fine-scale spatial variation, and potentially high species diversity. Advanced remote sensing data such as airborne Light Detection and Ranging (LiDAR) with high pulse density (25point/m2) and hyperspectral imagery offer two different yet complementary approaches to estimating crown structure and canopy physiological information at the individual crown scale, which can be useful for mapping tree species. In this paper, we evaluate the potential of these technologies to map 15 common urban tree species using a Random Forest (RF) classifier in the City of Surrey, British Columbia, Canada. LiDAR-derived crown structural information was combined with hyperspectral-derived spectral vegetation indices for species classification. Results indicate an overall accuracy of 51.1%, 61.0%, and 70.0% using hyperspectral, LiDAR and the combined data respectively. The overall accuracy for the two most important and iconic native coniferous species improved markedly from 78.3% up to 91% using the combined data. The results of this research highlight that (1) the combination of structural and spectral information provided an improved classification accuracy than when used separately, and variables derived from LiDAR data contributed more to the accurate prediction of species than hyperspectral features; (2) higher classification accuracies were observed for evergreen species, species with distinguishable crown structure, and species undergoing flowering; (3) and finally the anthocyanin content index and photochemical reflectance index were the most important hyperspectral features for the discrimination of tree species in the spring budburst stage. Highlights ? Fused LiDAR and hyperspectral data are used to map fifteen urban tree species. ? Overall accuracy for each species ranged from 51 to 70%. ? Overall accuracy for two iconic native coniferous species was 78–91%. ? LiDAR contributed more to the accurate prediction of species than hyperspectral features. ?
机译:<![cdata [ 抽象 城市地区内的映射树种对于可持续城市规划至关重要,并提高我们对职位的理解城市植被作为生态服务。城市树木在减轻城市热岛效果和支持生物多样性方面有重大贡献。然而,由于现场采样,细尺空间变化和潜在的高物种多样性的耗时性,所以难以实现城市树种物种的准确和最新的映射。高级遥感数据,如机载光检测和测距(LIDAR),具有高脉冲密度(25 点/ M 2 )和高光谱图像提供两种不同的又互补方法,以估计各个冠秤的冠结构和冠层生理信息,这对于映射树种来说是有用的。在本文中,我们评估了这些技术的潜力在加拿大不列颠哥伦比亚省萨里(RF)County Canda,Conlyy Count的随机森林(RF)分类器来映射15个常见的城市树种。 LIDAR衍生的冠结构信息与物种分类的高光谱衍生的光谱植被联合。结果分别表明,使用高光谱,激光雷达和组合数据的总精度为51.1%,61.0%和70.0%。两种最重要的和标志性的原生针叶树种类的整体准确性显着从组合数据的78.3%提高了78.3%,高达91%。该研究的结果突出显示(1)结构和光谱信息的组合提供了比单独使用时的改进的分类精度,并且从LIDAR数据中导出的变量贡献了比Hyperspectral特征更多的精确预测。 (2)常绿物种观察到较高的分类精度,具有可区分冠结构的物种,物种和遭受开花的物种; (3)最后,花青素含量指数和光化学反射率指数是春突破阶段中树种鉴别的最重要的高光谱特征。 亮点 < CE:标签>? 融合激光雷达和高光谱数据用于映射十五个城市树种。 每个物种的总体精度范围51至70%。 两个标志性原生针叶种类的总体精度为78-91%。 LIDAR贡献了更多的是对物种的准确预测而不是高光谱特征。

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