基于航空高光谱影像的城市植被制图可行性和局限性

W. Ouerghemmi, S. Gadal, G. Mozgeris, D. Jonikavicius
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引用次数: 5

摘要

快速城市化需要对区域内和城市周围的绿地进行复杂的管理。在这种情况下,使用高分辨率图像可以快速了解所考虑的研究区域的物种分布,甚至可以利用高光谱分辨率(即超光谱/高光谱图像)进行物种识别。本研究旨在探讨立陶宛考纳斯市8种植被物种识别的可行性。目标是确定米制/厘米制空间分辨率图像的潜力,这些图像具有少于100个波段和有限的光谱间隔(例如Vis-NIR),能够识别城市植被物种。对于一些被考虑的物种,地面真实样本也是有限的。该方法包括基于植被掩蔽的预处理和基于最小噪声分数(MNF)的特征选择。支持向量机(基于分类器)比光谱角映射器(SAM)表现出令人鼓舞的性能,在统计分析方面精度并不高(即高达总精度的46%),但视觉检查显示被检测物种的连贯分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Urban vegetation mapping by airborne hyperspetral imagery; feasibility and limitations
Fast urbanization requires complex management of green spaces inside districts and all around the cities. In this context, the use of high-resolution imagery could give a fast overview of species distribution in the considered study zone, and could even permit species recognition by taking advantage of high spectral resolution (i.e. superspectral/hyperspectral imagery). In this study, we aim to explore the feasibility of eight vegetation species recognition inside Kaunas city (Lithuania). The goal is to determine the potential of metric/centimetric spatial resolution imagery with less than hundred bands and a limited spectral interval (e.g. Vis-NIR), to be able to recognize urban vegetation species. The ground truth samples were also limited for some of the considered species. The method included pre-treatments based on vegetation masking and feature selection using Minimum Noise Fraction (MNF). Support Vector Machine (based classifier) showed encouraging performance over Spectral Angle Mapper (SAM), the accuracies were not notably high in term of statistical analysis (i.e. up to 46% of overall accuracy) but the visual inspection showed coherent distribution of the detected species.
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