偏振与非偏振激光雷达在落叶针叶树分类中的比较研究

Songxin Tan, Ali Haider
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引用次数: 10

摘要

激光雷达作为森林遥感中重要的主动遥感工具,能够提供树高、冠层结构、地上生物量等参数信息。近年来,利用激光雷达数据对树种进行分类已经成为人们所希望的。利用商用非偏振激光雷达在优势种和单株水平上进行树种分类研究。本研究的目的是利用新开发的偏振激光雷达系统对落叶和针叶树进行分类。在野外收集了五种不同树种的激光雷达数据。其中包括黄松、奥地利松、蓝云杉、绿灰和枫木。对数据进行预处理,并采用人工神经网络方法进行分类。数据分析表明,极化激光雷达数据的分类性能远远优于非极化激光雷达数据。
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A comparative study of polarimetric and non-polarimetric lidar in deciduous-coniferous tree classification
As an important active remote sensing tool in forest remote sensing, lidar is able to provide information on tree height, canopy structure, aboveground biomass, among other parameters. It has become desirable to be able to classify tree species using lidar data during recent years. Research has been performed using commercial non-polarimetric lidar in tree species classification, at either dominant species level or individual tree level. The objective of this research is to classify deciduous and coniferous trees using the newly developed polarimetric lidar system. Lidar data from five different tree species were collected in the field. These included ponderosa pine, Austrian pine, blue spruce, green ash and maple. Data were preprocessed and artificial neural network method was developed for classification. Data analysis demonstrated that the classification performance using polarimetric lidar data was far better than that using the non-polarimetric lidar data.
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