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AUTOMATIC FRAMEWORK FOR SEMI-SUPERVISED HYPERSPECTRAL IMAGE CLASSIFICATION USING SELF-TRAINING WITH DATA EDITING

机译:使用数据编辑自动训练自动框架半监控高光谱图像分类

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In this paper, we propose a new semi-supervised classification algorithm called RDE_self-training, which is an automatic framework for classification of remotely sensed hyperspectral images. The algorithm exploits abundant unlabeled samples when the number of labeled samples is limited to learn an accurate classifier. Train the classifier iteratively on enlarged training set with data editing. Firstly, train a classifier with initial labeled samples and predict the unlabeled samples. Secondly, revise the labels of mislabeled samples according to nearest neighbor voting rule. Thirdly, select few samples ordered by high probability from the revised samples set, and filter the noisy samples to enlarge training set, then retrain the classifier to predict. Finally, revise the mislabeled samples according to nearest neighbor voting rule to obtain the final classification map. During the process of semi-supervised classification, the unlabeled samples are selected from the pool of candidates automatically without human effort. The effectiveness of the proposed approach is evaluated via experiments with real hyperspectral image collected by AVIRIS over the Indian Pines region, Indiana. The experimental results indicate that the proposed framework outperform state-of-the-art classification performance with unlabeled data added.
机译:在本文中,我们提出了一种新的半监督分类算法,称为RDE_SEM-TRANKING,这是一种自动对远程感测的高光谱图像进行分类的框架。当标记样本的数量限制为学习精确的分类器时,该算法利用丰富的未标记样本。使用数据编辑的放大培训策略策略列车。首先,用初始标记的样品训练分类器并预测未标记的样本。其次,根据最近的邻居投票规则修改误标标样本的标签。第三,从修改后的样本集中选择很少的样本,并从修改后的样本集中过滤,并过滤嘈杂的样本来放大训练集,然后重新恢复分类器以预测。最后,根据最近的邻居投票规则修改错误标记的样本,以获得最终分类图。在半监督分类过程中,未标记的样本自动选自候选池,没有人力努力。所提出的方法的有效性是通过Aviris收集的真实高光谱图像,在印第安纳州印度松树区域收集的真实高光谱图像。实验结果表明,所提出的框架优先于最先进的分类性能,添加了未标记的数据。

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