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Seasonal Separation of African Savanna Components Using Worldview-2 Imagery: A Comparison of Pixel- and Object-Based Approaches and Selected Classification Algorithms

机译:使用Worldview-2影像对非洲稀树草原成分进行季节性分离:基于像素和基于对象的方法与选定分类算法的比较

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Separation of savanna land cover components is challenging due to the high heterogeneity of this landscape and spectral similarity of compositionally different vegetation types. In this study, we tested the usability of very high spatial and spectral resolution WorldView-2 (WV-2) imagery to classify land cover components of African savanna in wet and dry season. We compared the performance of Object-Based Image Analysis (OBIA) and pixel-based approach with several algorithms: k-nearest neighbor (k-NN), maximum likelihood (ML), random forests (RF), classification and regression trees (CART) and support vector machines (SVM). Results showed that classifications of WV-2 imagery produce high accuracy results (>77%) regardless of the applied classification approach. However, OBIA had a significantly higher accuracy for almost every classifier with the highest overall accuracy score of 93%. Amongst tested classifiers, SVM and RF provided highest accuracies. Overall classifications of the wet season image provided better results with 93% for RF. However, considering woody leaf-off conditions, the dry season classification also performed well with overall accuracy of 83% (SVM) and high producer accuracy for the tree cover (91%). Our findings demonstrate the potential of imagery like WorldView-2 with OBIA and advanced supervised machine-learning algorithms in seasonal fine-scale land cover classification of African savanna.
机译:由于该景观的高度异质性和成分不同的植被类型的光谱相似性,稀树草原土地覆盖物成分的分离具有挑战性。在这项研究中,我们测试了非常高的空间分辨率和光谱分辨率的WorldView-2(WV-2)图像对干湿季非洲大草原的土地覆盖成分进行分类的可用性。我们将基于对象的图像分析(OBIA)和基于像素的方法的性能与几种算法进行了比较:k最近邻(k-NN),最大似然(ML),随机森林(RF),分类和回归树(CART) )和支持向量机(SVM)。结果表明,无论采用哪种分类方法,WV-2影像的分类都可以产生较高的准确度结果(> 77%)。但是,OBIA几乎对每个分类器都具有更高的准确度,最高总体准确度得分为93%。在经过测试的分类器中,SVM和RF的准确性最高。雨季图像的总体分类提供了更好的结果,其中RF占93%。但是,考虑到木质叶子的生长条件,旱季分类也表现良好,总体准确度为83%(SVM),树木覆盖物的生产者准确度较高(91%)。我们的发现证明了具有OBIA的WorldView-2影像和先进的有监督的机器学习算法在非洲大草原的季节性精细尺度土地覆盖分类中的潜力。

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