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Framework for Automatic Selection of Kernels based on Convolutional Neural Networks and CkMeans Clustering Algorithm

机译:基于卷积神经网络和CKMeans聚类算法的内核自动选择框架

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摘要

Convolutional neural networks (CNN) can learn deep feature representation for hyperspectral imagery (HSI) interpretation and attain excellent accuracy of classification if we have many training samples. Due to its superiority in feature representation, several works focus on it, among which a reliable classification approach based on CNN, used filters generated from cluster framework, like k Means algorithm, yielded good results. However, the kernels number to be manually assigned. To solve this problem, a HSI classification framework based on CNN, where the convolutional filters to be adaptatively learned from the data, by grouping without knowing the cluster number, has recently proposed. This framework, based on the two algorithms CNN and kMeans, showed high accuracy results. So, in the same context, we propose an architecture based on the depth convolution al neural networks principle, where kernels are adaptatively learned, using CkMeans network, to generate filters without knowing the number of clusters, for hyperspectral classification. With adaptive kernels, the proposed framework automatic kernels selection by CkMeans algorithm (AKSCCk) achieves a better classification accuracy compared to the previous frameworks. The experimental results show the effectiveness and feasibility of AKSCCk approach.
机译:卷积神经网络(CNN)可以学习Hyperspectral图像(HSI)解释的深度特征表示,如果我们有许多训练样本,则获得优异的分类准确性。由于其特征表示的优势,几项工作侧重于其,其中基于CNN的可靠分类方法,从集群框架中产生的使用过滤器,如K表示算法,产生了良好的效果。但是,要手动分配内核编号。为了解决这个问题,最近提出了一种基于CNN的HSI分类框架,其中通过在不知道群集号码的情况下通过分组来自动学习卷积滤波器。该框架基于两种算法CNN和KMEANS,显示出高精度的结果。因此,在相同的背景下,我们提出了一种基于深度卷积的架构,基于深度卷积AL神经网络原理,其中核心使用CKMean网络来生成滤波器而不知道群集的群体,用于高光谱分类。通过Adaptive Kernels,CKMeans算法(AKSCCK)的建议框架自动内核选择与前一个框架相比,实现了更好的分类准确性。实验结果表明AKSCCK方法的有效性和可行性。

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