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Evaluation of Tree Species Classification Methods using Multi-Temporal Satellite Images

机译:利用多时相卫星图像评估树木物种分类方法

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Tree species classification is an important step towards forest monitoring and biodiversity conservation. This research study evaluates several multispectral image classification techniques for tree species over Ahwa village in Dang district, South Gujarat, India. Multispectral images consisting of 4 bands-R, G, B and NIR collected over 4 months was used. Object-based segmentation using mean shift, cluster-based using K-Means and Gaussian Mixture Model (GMM) and pixel-based methods have been analyzed. Additionally, a new method of classification has been described using the Dynamic Time Warping (DTW) algorithm. It outperformed supervised classification techniques with accuracy over 95%. The GMM+DTW model accurately reflected the actual species distribution found in the ground truth.
机译:树种分类是朝着森林监测和生物多样性保护迈出的重要一步。这项研究评估了印度南古吉拉特邦Dang区Ahwa村树种的几种多光谱图像分类技术。使用在4个月内收集的由4个波段-R,G,B和NIR组成的多光谱图像。分析了使用均值平移的基于对象的分割,使用K均值和高斯混合模型(GMM)的基于聚类的方法以及基于像素的方法。此外,已经使用动态时间规整(DTW)算法描述了一种新的分类方法。它优于监督分类技术,准确率超过95%。 GMM + DTW模型准确反映了地面真实情况下发现的实际物种分布。

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