首页> 外文期刊>International journal of remote sensing >Mapping individual tree location, height and species in broadleaved deciduous forest using airborne LIDAR and multi-spectral remotely sensed data
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Mapping individual tree location, height and species in broadleaved deciduous forest using airborne LIDAR and multi-spectral remotely sensed data

机译:利用机载激光雷达和多光谱遥感数据绘制阔叶落叶林中单个树的位置,高度和物种的图

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Automated feature extraction based on prototypes is only partially successful when applied to remotely sensed imagery of natural scenes due to the complexity and unpredictability of the shape and geometry of natural features. Here, a new method is developed for extracting the locations of treetops by applying GIS (Geographical Information System) overlay techniques and morphological functions to high spatial resolution airborne imagery. This method is based on the geometrical and spatial properties of tree crowns. Airborne data of the study site in the New Forest, UK included colour aerial photographs, LIDAR (Light Detection And Ranging) and ATM (Airborne Thematic Mapper) imagery. A DEM (Digital Elevation Model) was generated from LIDAR data and then subtracted from the original LIDAR image to create a Canopy Height Model (CHM). A set of procedures using image contouring and the manipulation of the resulting polygons was implemented to extract treetops from the aerial photographs and the CHM. Criteria were developed and threshold values were set. using a supervised approach for the acceptance or rejection of features based on field knowledge. Tree species were mapped by classifying the ATM data and these data were co-registered with the treetop layer. For broadleaved deciduous plantations the success of treetop extraction using aerial photographs was 91%, but was much lower using LIDAR data. For semi-natural forests, the LIDAR produced better results than the aerial photographs with a success of 80%, which was considered high, given the complexity of these uneven aged stands. The methodology presented here is easy to apply as it is implemented within a GIS and the final product is an accurate map with information about the location, height and species of each tree.
机译:由于自然特征的形状和几何形状的复杂性和不可预测性,基于原型的自动特征提取仅在部分应用于自然场景的遥感影像时才获得部分成功。在这里,开发了一种通过将GIS(地理信息系统)覆盖技术和形态学功能应用于高空间分辨率机载图像来提取树梢位置的新方法。此方法基于树冠的几何和空间特性。英国新森林地区研究地点的机载数据包括彩色航空照片,LIDAR(光探测与测距)和ATM(机载专题测绘仪)图像。从LIDAR数据生成DEM(数字高程模型),然后从原始LIDAR图像中减去DEM(数字高程模型)以创建树冠高度模型(CHM)。实施了一系列使用图像轮廓绘制和对所得多边形进行操作的程序,以从航拍照片和CHM中提取树梢。制定标准并设定阈值。使用监督方法基于现场知识来接受或拒绝特征。通过对ATM数据进行分类来映射树种,并将这些数据与树顶层进行共注册。对于阔叶落叶人工林,使用航拍照片提取树梢的成功率为91%,但使用LIDAR数据则要低得多。对于半天然森林,鉴于这些参差不齐的陈年林分的复杂性,激光雷达比航空摄影产生的结果更好,成功率为80%,这被认为是很高的。这里介绍的方法易于应用,因为它是在GIS中实现的,最终产品是一张准确的地图,其中包含有关每棵树的位置,高度和种类的信息。

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