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Comparison of data mining algorithms in remote sensing using Lidar data fusion and feature selection

机译:利用LIDAR数据融合和特征选择对数据挖掘算法的比较

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Application of data mining techniques defines the basis of land use classification. Even though multispectral images can be very accurate in classifying land cover categories, using spectral reflectivity alone sometimes fails to distinguish between landcover types that share similar spectral signatures such as forest and wetlands. The problem aggravates owing to interpolation of neighbourhood pixel values. In this paper, we present a comparison of four classification and clustering algorithms and analyze their performance. These algorithms are applied both on spectral reflectivity values alone and along with Lidar data fusion. Experiments were performed in the Carlton County of Minnesota. Accuracy estimation was conducted for all models. Experiments indicate that accuracy increases when Lidar data is used to complement the spectral reflectivity values. Random Forest Classification and Support Vector Machines yield good results consistently due to their ensemble learning methods and the ability to represent non-linear relationship in the dataset, respectively. Maximum likelihood shows significant improvement with Lidar data fusion and ISODATA clustering approach has the lowest accuracy rate.
机译:数据挖掘技术的应用定义了土地利用分类的基础。尽管多光谱图像在分类土地覆盖类别中可以非常准确,但是单独使用光谱反射率,有时不能区分与森林和湿地等类似的光谱签名的地层类型。由于邻域像素值的插值,问题会加剧。在本文中,我们展示了四种分类和聚类算法的比较并分析了它们的性能。这些算法在单独的光谱反射值和LIDAR数据融合中应用。实验在明尼苏达州卡尔顿县进行。为所有模型进行准确性估计。实验表明,当使用LIDAR数据来补充光谱反射率值时,准确性增加。随机森林分类和支持向量机产生良好的结果,始终如一,因为它们的集合学习方法和代表数据集中的非线性关系的能力分别。 LIDAR数据融合和ISODATA聚类方法具有最低精度率的最大可能性显示出显着的改进。

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