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Balanced data driven sparsity for unsupervised deep feature learning in remote sensing images classification

机译:平衡数据驱动的稀疏性,用于遥感图像分类中的无监督深度特征学习

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There are many attempts that utilize deep learning methods to solve the problem of classification in remote sensing images. Convolutional Neural Networks (CNN) have made very good performance for various visual tasks, and marked their important place in all deep learning models. However, for some classification tasks of remote sensing images, CNN could not demonstrate their full potential because of lacking large amounts of labeled training data. Some efforts have been made to combine CNN with unlabeled data to tackle the problem by performing unsupervised learning. In this work we propose the balanced data driven sparsity to help train CNN in an unsupervised way. The experiments over the real world remote sensing images demonstrate that the proposed method improves the performance of the recent methods.
机译:有许多尝试利用深度学习方法来解决遥感图像中的分类问题。卷积神经网络(CNN)在各种视觉任务上都表现出色,并在所有深度学习模型中都占有重要的地位。但是,对于某些遥感图像分类任务,由于缺乏大量的标记训练数据,CNN无法充分发挥其潜力。已经进行了一些努力来将CNN与未标记的数据结合起来,以通过执行无监督学习来解决该问题。在这项工作中,我们提出了平衡的数据驱动稀疏性,以帮助以无监督的方式训练CNN。在现实世界的遥感图像上的实验表明,所提出的方法提高了最新方法的性能。

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