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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Comparison of multispectral airborne laser scanning and stereo matching of aerial images as a single sensor solution to forest inventories by tree species
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Comparison of multispectral airborne laser scanning and stereo matching of aerial images as a single sensor solution to forest inventories by tree species

机译:多光谱空气传播激光扫描与空中图像的立体声匹配与树种森林库存的单个传感器解决方案

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摘要

Airborne Light Detection and Ranging (LiDAR) information alone is insufficient for species-specific prediction of forest stand attributes, and therefore auxiliary optical image features (OIF) are commonly used to decrease the prediction errors associated with species-specific tree attributes. However, this requires collection and merging of two data sources, LiDAR and OIF, which increases the costs of the inventory. The recently introduced multispectral LiDAR (M-ALS) provides a potential single-sensor solution for obtaining species-specific information, as its multispectral intensity values resemble optical image data. Image point clouds (IPC) derived from aerial stereo images are another single-sensor option that provides both geometric and optical information. We compared two single-sensor options, M-ALS and IPC, with two LiDAR data sets (leaf-on and leaf-off) with auxiliary OIF, for the prediction of boreal tree species' volumes. In terms of root-mean-square error (RMSE) in the validation data, the LiDAR + OIF combination performed best (leaf-on RMSE: 33.3%; leaf-off RMSE 34.3%), followed by M-ALS + OIF (RMSE = 35.2%) and IPC + OIF (RMSE = 42.4%). The mean RMSE value associated with M-ALS increased to the same level (44.7%) as the IPC + OIF combination when optical image features were not included. Both IPC and M-ALS are potential single sensor solutions for forest inventories, but the use of both LiDAR and OIF provides the most accurate results.
机译:仅限空中光检测和测距(LIDAR)信息不足森林支架属性的特定物种预测,因此辅助光学图像特征(OIF)通常用于减少与特定于物种的树属性相关联的预测误差。但是,这需要收集和合并两个数据源,激光雷达和OIF,这增加了库存的成本。最近引入的MultiSpectral LIDAR(M-ALS)提供了用于获得物种特定信息的潜在的单传感器解决方案,因为其多光谱强度值类似于光学图像数据。从空中立体声图像派生的图像点云(IPC)是另一个单传感器选项,提供几何和光学信息。我们比较了两个单传感器选项,M-ALS和IPC,具有两个LIDAR数据集(叶片和叶子脱落),用于预测北方树种的卷。在验证数据中的根均方误差(RMSE)方面,LIDAR + OIF组合最佳(叶子RMSE:33.3%;叶子关闭RMSE 34.3%),其次是M-ALS + OIF(RMSE = 35.2%)和IPC + OIF(RMSE = 42.4%)。当未包括光学图像特征时,与M-ALS相关联的平均RMSE值随着IPC + OIF组合而增加到相同的级别(44.7%)。 IPC和M-ALS都是森林库存的潜在单一传感器解决方案,但LIDAR和OIF的使用提供了最准确的结果。

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