Urban forest analysis: species classification using machine learning and remote sensing data

M. V. Platonova, A. V. Kukharskii, E. B. Talovskaya, G. I. Lazorenko
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Abstract

Effective management of urban forests requires an integrated approach, starting with a complete inventory of their biodiversity. At the moment, data on the floristic composition of urban forests in Siberian cities is either limited or fragmentary. The purpose of this study is to classify urban forests by species and determine their ontogenetic state using remote sensing materials. This study aims to deeply analyze the structure of urban forests using remote sensing data, in particular the use of unmanned aerial vehicles.
城市森林分析:利用机器学习和遥感数据进行物种分类
有效管理城市森林需要采取综合方法,首先要对城市森林的生物多样性进行全面清查。目前,有关西伯利亚城市森林植物组成的数据要么有限,要么零散。本研究的目的是利用遥感材料对城市森林进行物种分类,并确定其本体状态。本研究旨在利用遥感数据,特别是利用无人驾驶飞行器,深入分析城市森林的结构。
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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