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MCK-ELM: multiple composite kernel extreme learning machine for hyperspectral images

机译:MCK-ELM:高光谱图像的多个复合内核极端学习机

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摘要

Multiple kernel (MK) learning (MKL) methods have a significant impact on improving the classification performance. Besides that, composite kernel (CK) methods have high capability on the analysis of hyperspectral images due to making use of the contextual information. In this work, it is aimed to aggregate both CKs and MKs autonomously without the need of kernel coefficient adjustment manually. Convex combination of predefined kernel functions is implemented by using multiple kernel extreme learning machine. Thus, complex optimization processes of standard MKL are disposed of and the facility of multi-class classification is profited. Different types of kernel functions are placed into MKs in order to realize hybrid kernel scenario. The proposed methodology is performed over Pavia University, Indian Pines, and Salinas hyperspectral scenes that have ground-truth information. Multiple composite kernels are constructed using Gaussian, polynomial, and logarithmic kernel functions with various parameters, and then the obtained results are presented comparatively along with the state-of-the-art standard machine learning, MKL, and CK methods.
机译:多个内核(MK)学习(MKL)方法对提高分类性能产生重大影响。除此之外,复合内核(CK)方法对由于利用上下文信息而产生高度的高光谱图像的能力。在这项工作中,旨在自主聚集CKS和MKS,而不需要手动需要内核系数调整。通过使用多个内核极端学习机实现预定义内核功能的凸组合。因此,标准MKL的复杂优化过程被处理,并且利用了多级分类的设施。将不同类型的内核功能放入MKS中以实现混合内核方案。拟议的方法是在帕维亚大学,印度松,以及具有地面信息的Salinas高光谱场景。使用具有各种参数的高斯,多项式和对数内核函数构造多个复合核,然后通过最先进的标准机器学习,MKL和CK方法呈现所获得的结果。

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