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Granulation-based self-training for the semi-supervised classification of remote-sensing images

机译:基于颗粒的自我培训,用于遥感图像的半监督分类

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摘要

Collection of quality-labeled training samples in the area of remote sensing is very difficult, costly, time-consuming, and tedious due to various constraints. Classification of remote-sensing images is a challenging task due to the limited availability of quality-labeled samples for the training process. To solve the problem of labeled samples, various semi-supervised techniques have been designed and explored for the classification of remote-sensing images. Self-training is a popular semi-supervised method widely used for the training of supervised classifier with limited labeled and a large pool of unlabeled samples. However, the traditional self-training approach gives poor performance for the classification of remote-sensing images. The traditional self-training method selects samples only on the basis of maximum classification probability criterion which may not improve the classifier accuracy. The effectiveness of the classifiers trained in the self-training fashion depends on the selection of correct, diverse, and informative samples for the labeled training set. In this paper, granular computing concepts have been utilized to improve the self-training approach for the classification of the remote-sensing images. The proposed approach first groups the unlabeled samples into several numbers of granules. After that, a supervised classifier is trained with few labeled samples and the trained classifier is used to select the most confident granules set. The selected most confident granules help to add qualitative samples into the labeled set for the effective training of the classifiers. The experimental results with three benchmark remote-sensing data sets show that the proposed method has produced improvement in the classification accuracy.
机译:遥感领域的质量标记培训样本的集合非常困难,昂贵,耗时,由于各种限制而乏味。由于培训过程的质量标记样本的可用性有限,遥感图像的分类是一个具有挑战性的任务。为了解决标记样本的问题,已经设计了各种半监督技术,用于遥感图像的分类。自我培训是一种流行的半监督方法,广泛用于监督分类器的培训,其中有限标记和大量的未标记样本。然而,传统的自我训练方法对遥感图像的分类产生了差的性能。传统的自训练方法仅基于最大分类概率标准选择样本,这可能不会提高分类器精度。在自我训练时尚训练的分类器的有效性取决于选择正确,多样化和信息性的样本,用于标记的训练集。在本文中,已经利用粒度计算概念来改善遥感图像分类的自我训练方法。所提出的方法首先将未标记的样品群体分为几个数量的颗粒。之后,监督分类器训练,其中少量标记的样本,培训的分类器用于选择最自信的颗粒。所选最有信心的颗粒有助于将定性样本添加到标签集中,以便有效培训分类器。具有三个基准遥感数据集的实验结果表明,所提出的方法已经提高了分类准确性。

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