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Unsupervised deep feature extraction of hyperspectral images

机译:超光谱图像的无监督深度特征提取

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摘要

This paper presents an effective unsupervised sparse feature learning algorithm to train deep convolutional networks on hyperspectral images. Deep convolutional hierarchical representations are learned and then used for pixel classification. Features in lower layers present less abstract representations of data, while higher layers represent more abstract and complex characteristics. We successfully illustrate the performance of the extracted representations in a challenging AVIRIS hyperspectral image classification problem, compared to standard dimensionality reduction methods like principal component analysis (PCA) and its kernel counterpart (kPCA). The proposed method largely outperforms the previous state-of-the-art results on the same experimental setting. Results show that single layer networks can extract powerful discriminative features only when the receptive field accounts for neighboring pixels. Regarding the deep architecture, we can conclude that: (1) additional layers in a deep architecture significantly improve the performance w.r.t. single layer variants; (2) the max-pooling step in each layer is mandatory to achieve satisfactory results; and (3) the performance gain w.r.t. the number of layers is upper bounded, since the spatial resolution is reduced at each pooling, resulting in too spatially coarse output features.
机译:本文介绍了一个有效的无监督稀疏特征学习算法,用于在高光谱图像上培训深卷积网络。学习深度卷积的分层表示,然后用于像素分类。较低层的功能呈现较少的抽象表示的数据,而较高的层数表示更摘要和复杂的特性。与标准维度减少方法(PCA)及其内核对应物(KPCA)等标准维数减少方法相比,我们成功地说明了提取的Aviris Hyperspectrings Porther型图像分类问题中提取的表示的性能。所提出的方法在很大程度上优于同一实验环境的先前最先进的结果。结果表明,只有当接收字段占相邻像素时,单层网络才能提取强大的辨别特征。关于深度建筑,我们可以得出结论:(1)深度架构中的附加层显着改善了性能W.r.t.单层变体; (2)每层的最大池步骤是强制性的,以实现令人满意的结果; (3)性能增益W.R.T.层数是上界的,因为在每个池中减小了空间分辨率,导致太空粗略的输出特征。

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