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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Urban tree species mapping using hyperspectral and lidar data fusion
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Urban tree species mapping using hyperspectral and lidar data fusion

机译:利用高光谱和激光雷达数据融合进行城市树木物种制图

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In this study we fused high-spatial resolution (3.7 m) hyperspectral imagery with 22 pulse/m~2 lidar data at the individual crown object scale to map 29 common tree species in Santa Barbara, California, USA. We first adapted and parallelized awatershed segmentation algorithmto delineate individual crowns froma gridded canopymaxima model. From each segment, we extracted all spectra exceeding a Normalized Difference Vegetation Index (NDVI) threshold and a suite of crown structural metrics computed directly from the three-dimensional lidar point cloud. The variables were fused and crowns were classified using canonical discriminant analysis. The full complement of spectral bands along with 7 lidar-derived structural metrics were reduced to 28 canonical variates and classified. Species-level and leaf-type level maps were produced with respective overall accuracies of 83.4% (kappa = 82.6) and 93.5%. The addition of lidar data resulted in an increase in classification accuracy of 4.2 percentage points over spectral data alone. The value of the lidar structural metrics for urban species discrimination became particularly evident when mapping crowns that were either small or morphologically unique. For instance, the accuracy with which we mapped the tall palm species Washingtonia robusta increased from29% using spectral bands to 71%with the fused dataset. Additionally,we evaluated the role that automated segmentation plays in classification error and the prospects for mapping urban forest species not included in a training sample. The ability to accuratelymap urban forest species is an important step towards spatially explicit urban forest ecosystem assessment.
机译:在这项研究中,我们将高空间分辨率(3.7 m)高光谱图像与22脉冲/ m〜2激光雷达数据在单个树冠对象比例上进行了融合,以绘制美国加利福尼亚州圣塔芭芭拉的29种常见树种。我们首先采用并行化的分水岭分割算法,以从网格化的冠层最大模型中描绘出单个树冠。从每个片段中,我们提取了超出归一化植被指数(NDVI)阈值的所有光谱以及直接从三维激光雷达点云计算出的一系列冠状结构度量。融合变量,并使用规范判别分析对牙冠进行分类。光谱带的全部补充以及7个激光雷达衍生的结构指标被缩减为28个规范变量并进行了分类。分别绘制了物种水平和叶片类型水平图,总的准确度分别为83.4%(kappa = 82.6)和93.5%。激光雷达数据的添加使分类准确度比仅光谱数据提高了4.2个百分点。当绘制较小或形态独特的树冠时,激光雷达的结构指标对城市物种识别的价值变得尤为明显。例如,我们通过光谱带对高大的棕榈树种华盛顿州罗布斯塔作图的准确性从29%提高到融合数据集的71%。此外,我们评估了自动分割在分类错误中的作用以及培训样本中未包含的城市森林物种的制图前景。准确映射城市森林物种的能力是朝着空间明确的城市森林生态系统评估迈出的重要一步。

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