Forest mapping and classification of forest Type using LiDAR data and tree specie identification through image processing based on leaf extraction algorithms

A. Ballado, Ramon G. Garcia, Joanne Gem Z. Chichoco, Bianca Marie B. Domingo, Kimberly Joy M. Santuyo, Van Jay S. Sulmaca, Sarah Alma P. Bentir, Shydel M. Sarte
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引用次数: 1

Abstract

With the use of Light Detection and Ranging (LiDAR) Data, this study focuses on the processing of the LiDAR derived data through different software tools to generate a map that can classify forest types. A 20 × 20 meter plot in the selected forest area was identified in this study for the field validation of the classified leaf type. Leaf recognition is performed using Neural Network in Matlab. The leaf statistics were measured through the prototype developed using leaf extraction algorithms T-test is used for the comparative measurement between the perimeter of the extracted data and the actual perimeter of a sample leaf. The result shows that for the specie, the actual perimeter is statistically the same with the perimeter measured by the developed prototype. The accuracy of classification was calculated as 91.25%. The overall minimum and maximum precision of the prototype is computed to be 90.40% and 99.14%, respectively.
利用激光雷达数据进行森林制图和森林类型分类,通过基于树叶提取算法的图像处理进行树种识别
本研究利用激光雷达(LiDAR)数据,通过不同的软件工具对激光雷达衍生数据进行处理,生成可进行森林类型分类的地图。本研究在选定的森林区域内确定一个20 × 20 m的样地,对分类叶型进行田间验证。在Matlab中利用神经网络进行叶片识别。叶片统计量通过使用叶片提取算法开发的原型来测量,t检验用于提取数据的周长与样本叶片的实际周长之间的比较测量。结果表明,该试件的实际周长与所研制的样机测得的周长在统计上是一致的。分类准确率为91.25%。样机的总体最小精度和最大精度分别为90.40%和99.14%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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