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Semi-Supervised Scene Classification for Remote Sensing Images Based on CNN and Ensemble Learning

机译:基于CNN和集成学习的遥感影像半监督场景分类

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摘要

The special characteristic of remote sensing (RS) images being large scale while only low number of labeled samples available in practical applications has been obstacle to the development of RS image classification. In this paper, a novel semi-supervised framework is proposed. The high-capacity convolutional neural networks (CNN) are adopted to extract preliminary image features. The strategy of ensemble learning is then utilized to establish discriminative image representations by exploring intrinsic information of available data. Plain supervised learning is finally performed to obtain classification results. To verify the efficacy of our work, we compare it with mainstream feature representation and semi-supervised approaches. Experimental results show that by utilizing CNN features and ensemble learning, our framework can obtain more effective image representations and achieve superior results compared with other paradigms of semi-supervised classification.
机译:遥感(RS)图像的特点是规模大,而实际应用中只有很少数量的标记样本成为RS图像分类发展的障碍。本文提出了一种新颖的半监督框架。采用大容量卷积神经网络(CNN)提取初步图像特征。然后,通过探索可用数据的内在信息,利用集成学习策略来建立有区别的图像表示。最后进行普通监督学习以获得分类结果。为了验证我们工作的有效性,我们将其与主流特征表示法和半监督方法进行了比较。实验结果表明,与其他半监督分类范例相比,通过利用CNN特征和集成学习,我们的框架可以获得更有效的图像表示并获得更好的结果。

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