Urban green space vegetation height modeling and intelligent classification based on UAV multi-spectral and oblique high-resolution images

IF 6 2区 环境科学与生态学 Q1 ENVIRONMENTAL STUDIES
Ronghua Li , Zhican Bai , Chao Ye , Sergey Ablameyko , Shiping Ye
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引用次数: 0

Abstract

Urban green space (UGS) vegetation plays an important role in mitigating the urban heat island effect by improving the environment and quality of life. Hence, there is a dire necessity for urban planning and management to precisely obtain the spatial distribution and structural information employing high-resolution data. Nevertheless, the limitations of remote sensing (RS) data and the complexity of urban landscapes pose significant challenges, so this study aims to introduce a method to classify UGS vegetation more precisely by integrating high spatial resolution multi-spectral and oblique photography images captured by unmanned aerial vehicle (UAV). A novel canopy height model (CHM) method is proposed to generate UGS vegetation information for urban areas while addressing the errors associated with traditional approaches in estimating non-ground vegetation heights, achieving a total Mean Absolute Error (MAE) of 0.17 m and an overall accuracy of 95.03 %. The proposed UGS mapping method combines spectral features, canopy height information, vegetation indices (VIs), and texture features to evaluate the impact of various characteristics on classification accuracy. The obtained experimental results show that by incorporating canopy height information classification accuracy is significantly improved and achieve overall accuracy of 93.82 % and Kappa coefficient of 0.91. Moreover, the proposed method not only precisely reflects the structure and distribution of UGS vegetation by showing specific advantages in complex environments but also offers a new arena for UGS vegetation classification based on the integration of multiple features.
基于无人机多光谱斜向高分辨率影像的城市绿地植被高度建模与智能分类
城市绿地植被在缓解城市热岛效应、改善城市环境和生活质量方面发挥着重要作用。因此,利用高分辨率数据精确获取城市空间分布和结构信息是城市规划管理的迫切需要。然而,由于遥感数据的局限性和城市景观的复杂性,本研究旨在引入一种整合无人机(UAV)拍摄的高空间分辨率多光谱和倾斜摄影图像的UGS植被更精确分类方法。提出了一种新的冠层高度模型(CHM)方法来生成城市地区的UGS植被信息,同时解决了传统方法估算非地面植被高度的误差,总平均绝对误差(MAE)为0.17 m,总精度为95.03 %。提出的UGS制图方法结合光谱特征、冠层高度信息、植被指数(VIs)和纹理特征,评估各种特征对分类精度的影响。实验结果表明,结合冠层高度信息后,分类精度显著提高,总体精度达到93.82 %,Kappa系数为0.91。此外,该方法不仅能准确反映UGS植被的结构和分布,在复杂环境中显示出特定的优势,而且为基于多特征融合的UGS植被分类提供了新的领域。
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来源期刊
CiteScore
11.70
自引率
12.50%
发文量
289
审稿时长
70 days
期刊介绍: Urban Forestry and Urban Greening is a refereed, international journal aimed at presenting high-quality research with urban and peri-urban woody and non-woody vegetation and its use, planning, design, establishment and management as its main topics. Urban Forestry and Urban Greening concentrates on all tree-dominated (as joint together in the urban forest) as well as other green resources in and around urban areas, such as woodlands, public and private urban parks and gardens, urban nature areas, street tree and square plantations, botanical gardens and cemeteries. The journal welcomes basic and applied research papers, as well as review papers and short communications. Contributions should focus on one or more of the following aspects: -Form and functions of urban forests and other vegetation, including aspects of urban ecology. -Policy-making, planning and design related to urban forests and other vegetation. -Selection and establishment of tree resources and other vegetation for urban environments. -Management of urban forests and other vegetation. Original contributions of a high academic standard are invited from a wide range of disciplines and fields, including forestry, biology, horticulture, arboriculture, landscape ecology, pathology, soil science, hydrology, landscape architecture, landscape planning, urban planning and design, economics, sociology, environmental psychology, public health, and education.
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