Department of Environmental Science and Ecological Engineering, Korea University, Seoul 136-713, Korea.
Sci China Life Sci. 2010 Jul;53(7):898-908. doi: 10.1007/s11427-010-4019-z. Epub 2010 Aug 10.
Light Detection and Ranging (LiDAR) systems can be used to estimate both vertical and horizontal forest structure. Woody components, the leaves of trees and the understory can be described with high precision, using geo-registered 3D-points. Based on this concept, the Effective Plant Area Indices (PAI(e)) for areas of Korean Pine (Pinus koraiensis), Japanese Larch (Larix leptolepis) and Oak (Quercus spp.) were estimated by calculating the ratio of intercepted and incident LIDAR laser rays for the canopies of the three forest types. Initially, the canopy gap fraction (G ( LiDAR )) was generated by extracting the LiDAR data reflected from the canopy surface, or inner canopy area, using k-means statistics. The LiDAR-derived PAI(e) was then estimated by using G ( LIDAR ) with the Beer-Lambert law. A comparison of the LiDAR-derived and field-derived PAI(e) revealed the coefficients of determination for Korean Pine, Japanese Larch and Oak to be 0.82, 0.64 and 0.59, respectively. These differences between field-based and LIDAR-based PAI(e) for the different forest types were attributed to the amount of leaves and branches in the forest stands. The absence of leaves, in the case of both Larch and Oak, meant that the LiDAR pulses were only reflected from branches. The probability that the LiDAR pulses are reflected from bare branches is low as compared to the reflection from branches with a high leaf density. This is because the size of the branch is smaller than the resolution across and along the 1 meter LIDAR laser track. Therefore, a better predictive accuracy would be expected for the model if the study would be repeated in late spring when the shoots and leaves of the deciduous trees begin to appear.
激光雷达(LiDAR)系统可用于估算垂直和水平森林结构。使用地理配准的 3D 点,可以高精度描述木质组件、树木的叶子和林下植被。基于这一概念,通过计算三种森林类型树冠的截获和入射激光雷达射线的比值,估算了红松(Pinus koraiensis)、日本落叶松(Larix leptolepis)和栎树(Quercus spp.)的有效植物面积指数(PAI(e))。首先,通过使用 k-均值统计从树冠表面或内冠区提取 LiDAR 数据,生成冠层空隙分数(G (LiDAR))。然后,使用 G (LiDAR) 和 Beer-Lambert 定律来估算 LiDAR 衍生的 PAI(e)。LiDAR 衍生的和实地衍生的 PAI(e)之间的比较表明,红松、日本落叶松和栎树的决定系数分别为 0.82、0.64 和 0.59。不同森林类型的基于实地和基于 LiDAR 的 PAI(e)之间的这些差异归因于林分中叶片和树枝的数量。由于缺乏叶子,落叶松和栎树的情况是,LiDAR 脉冲仅从树枝上反射。与具有高密度叶子的树枝相比,LiDAR 脉冲从光秃树枝上反射的概率较低。这是因为树枝的大小小于沿 1 米 LiDAR 激光轨道横截和沿纵的分辨率。因此,如果在晚春再次进行研究,当落叶树的嫩枝和叶子开始出现时,该模型的预测精度将会更高。