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Detection of Aspens Using High Resolution Aerial Laser Scanning Data and Digital Aerial Images

机译:使用高分辨率航空激光扫描数据和数字航空影像检测白杨

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摘要

The aim was to use high resolution Aerial Laser Scanning (ALS) data and aerial images to detect European aspen (Populus tremula L.) from among other deciduous trees. The field data consisted of 14 sample plots of 30 m × 30 m size located in the Koli National Park in the North Karelia, Eastern Finland. A Canopy Height Model (CHM) was interpolated from the ALS data with a pulse density of 3.86/m2, low-pass filtered using Height-Based Filtering (HBF) and binarized to create the mask needed to separate the ground pixels from the canopy pixels within individual areas. Watershed segmentation was applied to the low-pass filtered CHM in order to create preliminary canopy segments, from which the non-canopy elements were extracted to obtain the final canopy segmentation, i.e. the ground mask was analysed against the canopy mask. A manual classification of aerial images was employed to separate the canopy segments of deciduous trees from those of coniferous trees. Finally, linear discriminant analysis was applied to the correctly classified canopy segments of deciduous trees to classify them into segments belonging to aspen and those belonging to other deciduous trees. The independent variables used in the classification were obtained from the first pulse ALS point data. The accuracy of discrimination between aspen and other deciduous trees was 78.6%. The independent variables in the classification function were the proportion of vegetation hits, the standard deviation of in pulse heights, accumulated intensity at the 90th percentile and the proportion of laser points reflected at the 60th height percentile. The accuracy of classification corresponded to the validation results of earlier ALS-based studies on the classification of individual deciduous trees to tree species.
机译:目的是使用高分辨率的航空激光扫描(ALS)数据和航空图像从其他落叶树中检测欧洲白杨(Populus tremula L.)。现场数据由位于芬兰东部北卡累利阿州科利国家公园的14个30 m×30 m大小的样地组成。从ALS数据中插值冠层高度模型(CHM),脉冲密度为3.86 / m 2 ,使用基于高度的滤波(HBF)进行低通滤波,然后二值化以创建所需的遮罩将地面像素与各个区域内的树冠像素分开。将分水岭分割应用于低通滤波后的CHM,以创建初步的雨棚分割,从中提取非雨棚元素以获得最终的雨棚分割,即针对雨棚遮罩分析地面遮罩。使用航空图像的手动分类将落叶树的冠层部分与针叶树的冠层部分分开。最后,将线性判别分析应用于落叶树的正确分类的冠层节段,以将其分类为属于白杨的节段和属于其他落叶树的节段。从第一脉冲ALS点数据中获得用于分类的自变量。白杨与其他落叶乔木的鉴别精度为78.6%。分类函数中的自变量是植被命中率,脉冲高度的标准偏差,在第90个百分位数处的累积强度以及在第60个反射的激光点的比例高度百分比。分类的准确性与早期基于ALS的将单个落叶树分类为树木种类的研究的验证结果相对应。

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