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Fusion of hyperspectral and LIDAR data using decision template-based fuzzy multiple classifier system

机译:基于决策模板的模糊多分类器系统融合高光谱和激光雷达数据

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摘要

Regarding to the limitations and benefits of remote sensing sensors, fusion of remote sensing data from multiple sensors such as hyperspectral and LIDAR (light detection and ranging) is effective at land cover classification. Hyperspectral images (HSI) provide a detailed description of the spectral signatures of classes, whereas LIDAR data give height detailed information. However, because of the more complexities and mixed information in LIDAR and HSI, traditional crisp classification methods could not be more efficient. In this situation, fuzzy classifiers could deliver more satisfactory results than crisp classification approaches. Also, referring to the limitation of single classifiers, multiple classifier system (MCS) may exhibit better performance in the field of multi-sensor fusion. This paper presents a fuzzy multiple classifier system for fusions of HSI and LIDAR data based on decision template (DT). After feature extraction and feature selection on each data, all selected features of both data are applied on a cube. Then classifications were performed by fuzzy k-nearest neighbour (FKNN) and fuzzy maximum likelihood (FML) on cube of features. Finally, a fuzzy decision fusion method is utilized to fuse the results of fuzzy classifiers. In order to assess fuzzy MCS proposed method, a crisp MCS based on support vector machine (SVM), KNN and maximum likelihood (ML) as crisp classifiers and naive Bayes (NB) as crisp classifier fusion method is applied on selected cube feature. A co-registered HSI and LIDAR data set from Houston of USA was available to examine the effect of proposed MCSs. Fuzzy MCS on HSI and LIDAR data provide interesting conclusions on the effectiveness and potentialities of the joint use of these two data. (C) 2015 Elsevier B.V. All rights reserved.
机译:关于遥感传感器的局限性和好处,来自多个传感器(例如高光谱和LIDAR)的遥感数据融合(光检测和测距)在土地覆盖分类中是有效的。高光谱图像(HSI)提供了有关类的光谱特征的详细描述,而LIDAR数据提供了高度的详细信息。但是,由于LIDAR和HSI的复杂性和混合信息的增多,传统的明快分类方法无法获得更高的效率。在这种情况下,与清晰的分类方法相比,模糊分类器可以提供更令人满意的结果。另外,参考单分类器的局限性,多分类器系统(MCS)在多传感器融合领域可能会表现出更好的性能。本文提出了一种基于决策模板(DT)的模糊多分类器系统,用于HSI和LIDAR数据的融合。在对每个数据进行特征提取和特征选择之后,将两个数据的所有选定特征都应用于多维数据集。然后通过模糊k最近邻(FKNN)和模糊最大似然(FML)对特征立方体进行分类。最后,采用模糊决策融合方法融合模糊分类器的结果。为了评估模糊MCS提出的方法,将基于支持向量机(SVM),KNN和最大似然(ML)作为明晰分类器和朴素贝叶斯(NB)作为明晰分类器融合方法的明晰MCS应用于所选立方体特征。来自美国休斯敦的共同注册的HSI和LIDAR数据集可用于检查提议的MCS的效果。 HSI和LIDAR数据的模糊MCS对这两个数据的联合使用的有效性和潜力提供了有趣的结论。 (C)2015 Elsevier B.V.保留所有权利。

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