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DISCRIMINATING MULTIPLE KERNEL LEARNING FOR JOINT CLASSIFICATION OF OPTICAL AND LIDAR DATA IN URBAN AREA

机译:区分多核学习,为城区光学和激光雷达数据的联合分类

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In this paper, two contributions are made. Firstly, we propose a discriminating multiple kernel learning (DMKL) algorithm to solve the combination coefficient of basic kernels by maximizing the separability in the kernel Hilbert space in the process of MKL. The core idea of the proposed algorithm is to find the optimal projective direction, which projects the basic kernels to a discriminating kernel, by making the minimum intraclass scatter and maximum interclass scatter. Secondly, in order to make full use of the information provided by LiDAR and optical data, a strategy for fusion of heterogeneous features is proposed. DMKL is used to excavate information of different attributes in spectral, spatial and elevation level respectively. Then, composite kernel strategy is used to make a fusion for spectral, spatial and elevation information. The experiments were carried out on a hyperspectral and a multispectral image along with LiDAR data acquired over an urban area, and the experimental results show that DMKL algorithm provides the best performance among several the state-of-the-art algorithms and the proposed strategy of fusion for heterogeneous features is effective.
机译:在本文中,提出了两项​​贡献。首先,我们提出了一种辨别多个内核学习(DMKL)算法来解决基本内核的组合系数,通过在MKL过程中最大化内核希尔伯特空间中的可分离性来解决基本内核的组合系数。所提出的算法的核心思想是找到最佳的突出方向,该方向将基本内核投射到识别内核,通过使最小的跨跨和最大的杂机散射。其次,为了充分利用LIDAR和光学数据提供的信息,提出了一种融合异构特征的策略。 DMKL用于分别在光谱,空间和高度级别中挖掘不同属性的信息。然后,复合内核策略用于对光谱,空间和高程信息进行融合。实验在高光谱和多光谱图像上进行,以及在城市地区获取的LIDAR数据,并且实验结果表明,DMKL算法在若干最先进的算法和所提出的策略中提供了最佳性能异质特征的融合是有效的。

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