首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Northern Conifer Forest Species Classification Using Multispectral Data Acquired from an Unmanned Aerial Vehicle
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Northern Conifer Forest Species Classification Using Multispectral Data Acquired from an Unmanned Aerial Vehicle

机译:北针叶树林种使用从无人驾驶飞行器获取的多光谱数据进行分类

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摘要

Object-based image analysis and machine learning classification procedures, after field calibration and photogrammetric processing of consumer-grade unmanned aerial vehicle (UAV) digital camera data, were implemented to classify tree species in a conifer forest in the Great Lakes/St Lawrence Lowlands Ecoregion, Ontario, Canada. A red-green-blue (RGB) digital camera yielded approximately 72 percent classification accuracy for three commercial tree species and one conifer shrub. Accuracy improved approximately 15 percent, to 87 percent overall, with higher radiometric quality data acquired separately using a digital camera that included near infrared observations (at a lower spatial resolution). Interpretation of the point cloud, spectral, texture and object (tree crown) classification Variable Importance (VI) selected by a machine learning algorithm suggested a good correspondence with the traditional aerial photointerpretation cues used in the development of well-established large-scale photography northern conifer elimination keys, which use three-dimensional crown shape, spectral response (tone), texture derivatives to quantify branching characteristics, and crown size, development and outline features. These results suggest that commonly available consumer-grade UAV-based digital cameras can be used with object-based image analysis to obtain acceptable conifer species classification accuracy to support operational forest inventory applications.
机译:基于对象的图像分析和机器学习分类程序,消费级无人机(UAV)数码相机数据的现场校准和摄影测量处理,用于在大湖/ St Lawrence Lowlands Ecoregion中对树木林进行分类。 ,安大略省,加拿大。红绿蓝(RGB)数码相机为三种商业树种和一个针叶树灌木产生约72%的分类精度。精度提高了大约15%,总体上为87%,具有更高的辐射质量数据,使用包括近红外观察(以较低的空间分辨率)分开获取的辐射质量数据。通过机器学习算法选择的点云,光谱,纹理和对象(树冠)分类变量(vi)表明了与传统的空中光学审商线索的良好对应,用于开发建立的大型摄影北方针叶树消除键,它使用三维冠状形状,光谱响应(音调),质地衍生物来量化分支特征,以及表冠大小,开发和概述特征。这些结果表明,普遍可用的消费级UV基数码相机可与基于对象的图像分析一起使用,以获得可接受的针叶树种类分类准确性,以支持运营林库存应用。

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