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Classification of Hyperspectral Images Using Machine Learning Methods

机译:利用机器学习方法分类高光谱图像

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Mixed pixels problem has significant effects on the application of remote sensing images. Spectral unmixing analysis has been extensively used to solve mixed pixels in hyperspectral images. This is based on the knowledge of a set of unidentified endmembers. This study used pixel purity index to extract endmembers from hyperspectral dataset of Washington DC mall. Generalized reduced gradient (GRG) a mathematical optimization method is used to estimate fractional abundances (FA) in the dataset. WEKA data mining tool is chosen to develop ensemble and non-ensemble classifiers using the set of the FA. Random forest (RF) and bagging represent ensemble methods while neural networks and C4.5 represent non-ensemble models for land cover classification (LCC). Experimental comparison between the classifiers shows that RF outperforms all other classifiers. The study resolves the problem associated with LCC by using GRG algorithm with supervised classifiers to improve overall classification accuracy. The accuracy comparison of the learners is important for decision makers in order to consider tradeoffs in accuracy and complexity of methods.
机译:混合像素问题对遥感图像的应用具有显着影响。光谱解密分析已被广泛地用于解决高光谱图像中的混合像素。这是基于一组未识别的终点的知识。本研究使用了像素纯度指数从华盛顿特区商场的高光谱数据集中提取终点。广义减少梯度(GRG)的数学优化方法用于估算数据集中的分数丰富(FA)。选择Weka数据挖掘工具使用FA的集合开发合并和非合奏分类器。随机森林(RF)和袋装代表集合方法,而神经网络和C4.5代表了陆地覆盖分类(LCC)的非整体模型。分类器之间的实验比较显示RF优于所有其他分类器。该研究通过使用带有监督分类器的GRG算法来解决与LCC相关的问题,以提高整体分类准确性。学习者的准确性比较对于决策者来说是重要的,以便考虑在准确性和方法复杂性的权衡。

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