Hyperspectral image classification using semi-supervised learning with label propagation

Usha Patel, Hardik Dave, Vibha Patel
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引用次数: 3

Abstract

Hyperspectral Image generally contains hundreds of spectral bands and thus provides a huge amount of information for a particular scene. Despite this, the classification task for hyperspectral image is considered difficult due to less number of labeled samples available. In recent years, deep learning algorithms have grown as the most significant and highly effective for classification tasks. But these algorithms require a huge amount of labeled data which is not suitable for hyperspectral images as getting labeled data is costly. To mitigate this problem, we can employ semi-supervised learning techniques that can address the issue of less labeled samples for training. In this paper, we have used label propagation technique to improve the performance of the CNN model using semi-supervised learning. By considering this semi-supervised learning strategy, we can obtain comparative performance on hyperspectral data using very less number of labeled samples.
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基于标签传播的半监督学习的高光谱图像分类
高光谱图像通常包含数百个光谱波段,因此可以为特定场景提供大量信息。尽管如此,由于可用的标记样本数量较少,高光谱图像的分类任务被认为是困难的。近年来,深度学习算法已成为分类任务中最重要和最有效的算法。但是这些算法需要大量的标记数据,而这些标记数据的获取成本很高,不适合高光谱图像。为了缓解这个问题,我们可以采用半监督学习技术来解决训练中标记较少的样本的问题。在本文中,我们使用标签传播技术来提高CNN模型的半监督学习性能。通过考虑这种半监督学习策略,我们可以使用很少数量的标记样本获得高光谱数据的比较性能。
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