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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Classification of Hyperspectral Data Using an AdaBoostSVM Technique Applied on Band Clusters
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Classification of Hyperspectral Data Using an AdaBoostSVM Technique Applied on Band Clusters

机译:使用AdaBoostSVM技术对波段群集进行高光谱数据分类

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摘要

Supervised classification of hyperspectral image data using conventional statistical classification methods is difficult because a sufficient number of training samples is often not available for the wide range of spectral bands. In addition, spectral bands are usually highly correlated and contain data redundancies because of the short spectral distance between the adjacent bands. To address these limitations, a multiple classifier system based on Adaptive Boosting (AdaBoost) is proposed and evaluated to classify hyperspectral data. In this method, the hyperspectral datasets are first split into several band clusters based on the similarities between the contiguous bands. In an AdaBoost classification system, the redundant and noninformative bands in each cluster are then removed using an optimal band selection technique. Next, a support vector machine (SVM) is applied to each refined cluster based on the classification results of previous clusters, and the results of these classifiers are fused using the weights obtained from the AdaBoost processing. Experimental results with standard hyperspectral datasets clearly demonstrate the superiority of the proposed algorithm with respect to both global and class accuracies, when compared to another ensemble classifiers such as simple majority voting and Naïve Bayes to combine decisions from each cluster, a standard SVM applied on the selected bands of entire datasets and on all the spectral bands. More specifically, the proposed method performs better than other approaches, especially in datasets which contain classes with greater complexity and fewer available training samples.
机译:使用常规的统计分类方法对高光谱图像数据进行监督分类是困难的,因为对于宽范围的光谱带而言通常没有足够数量的训练样本。此外,由于相邻频段之间的频谱距离较短,因此频谱频段通常高度相关,并包含数据冗余。为了解决这些限制,提出了一种基于自适应增强(AdaBoost)的多分类器系统,并对其进行了评估以对高光谱数据进行分类。在这种方法中,首先基于连续波段之间的相似性将高光谱数据集划分为几个波段簇。在AdaBoost分类系统中,然后使用最佳频段选择技术删除每个群集中的冗余和非信息频段。接下来,基于先前聚类的分类结果,将支持向量机(SVM)应用于每个精炼聚类,并使用从AdaBoost处理获得的权重对这些分类器的结果进行融合。与其他整体分类器(例如简单多数投票和朴素贝叶斯(NaïveBayes))相结合来组合每个聚类的决策时,标准高光谱数据集的实验结果清楚地证明了所提出算法在全局精度和分类精度方面的优越性。整个数据集的选定波段以及所有光谱波段。更具体地说,该方法的性能优于其他方法,尤其是在包含具有更高复杂度和更少可用训练样本的类的数据集中。

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