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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >COMPARATIVE ANALYSIS OF SVM, ANN AND CNN FOR CLASSIFYING VEGETATION SPECIES USING HYPERSPECTRAL THERMAL INFRARED DATA
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COMPARATIVE ANALYSIS OF SVM, ANN AND CNN FOR CLASSIFYING VEGETATION SPECIES USING HYPERSPECTRAL THERMAL INFRARED DATA

机译:利用超光谱热红外数据对植被物种进行支持向量机,人工神经网络和神经网络的比较分析

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Vegetation includes a significant class of terrestrial ecosystem. Information on tree species categorization is important for environmentalists, foresters, agriculturist, urban managers, landscape architects and biodiversity conservationist. The traditional methods of measuring and identifying tree species (i.e., through field-based survey) are time taking, laborious and costly. Remote sensing data provides an opportunity to identify and classify vegetation species over a large spatial extent. Hyperspectral remote sensing can detect the sublet spectral details among species classes and thus make it possible to differentiate vegetation species based on these subtle variations. This research examines the thermal infrared (2.5 to 14.0?μm) hyperspectral emissivity spectra (comprised of 3456 spectral bands) for the classification of thirteen different plant species. The use of thermal infrared hyperspectral emissivity spectra for the identification of vegetation species is very rare. Three different machine learning methods including support vector machine (SVM), artificial neural network (ANN) and convolutional neural network (CNN) are used to classify thirteen vegetation species and their performance is assessed based on their overall accuracy. The accuracy obtained by CNN, ANN and SVM is 99%, 94% and 91%, respectively. Each classifier was also tested for the advantage associated with increase in training samples or object segmentation size. Increase in the training samples improved the performance of SVM. In a nutshell, all comparative machine learning methods provide very high classification accuracy and CNN outperformed the comparative methods. This study concludes that thermal infrared hyperspectral emissivity data has the potential to discern vegetation species using state of the art machine learning and deep learning methods.
机译:植被包括重要的陆地生态系统。有关树种分类的信息对于环保主义者,林业工作者,农业学家,城市管理者,景观设计师和生物多样性保护主义者而言非常重要。测量和识别树木种类的传统方法(即通过实地调查)费时,费力且成本高。遥感数据提供了在很大的空间范围内识别和分类植被种类的机会。高光谱遥感可以检测物种类别之间的亚光谱信息,因此可以根据这些细微变化来区分植被物种。这项研究检查了热红外(2.5至14.0?m)高光谱发射率光谱(由3456个光谱带组成),以对13种不同的植物进行分类。使用热红外高光谱发射率光谱来识别植被种类非常少见。使用三种不同的机器学习方法,包括支持向量机(SVM),人工神经网络(ANN)和卷积神经网络(CNN)对13种植被进行分类,并基于它们的整体准确性对它们的性能进行评估。 CNN,ANN和SVM获得的精度分别为99%,94%和91%。还测试了每个分类器的优势,这些优势与增加训练样本或对象分割大小有关。训练样本的增加提高了SVM的性能。简而言之,所有比较机器学习方法都提供了非常高的分类精度,而CNN优于比较方法。这项研究得出的结论是,热红外高光谱发射率数据具有使用最先进的机器学习和深度学习方法来识别植被种类的潜力。

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