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Adaptive Neighborhood Strategy Based Generative Adversarial Network for Hyperspectral Image Classification

机译:基于自适应邻域策略的高光谱图像分类基于生成的对抗网络

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Hyperspectral image (HSI) is usually composed of hundreds of continuous bands, leading a challenge task for pixel-level classification owing to high-dimensional spectral features and insufficient labeled samples. In this paper, an adaptive neighborhood strategy based generative adversarial network with (AN-GAN) for semi-supervised HSI classification is proposed. The proposed AN-GAN approach firstly uses superpixel algorithm, e.g., simple linear iterative clustering (SLIC), to generate multiple spatially homogeneous regions. Furthermore, each superpixel is merged with its spectrally similar neighbor superpixels. Then, for the reconstructed superpixels, the limited labeled samples are used to train discriminator, and a large number of unlabeled samples are utilized to generate noise using sparse autoencoder and also used to train discriminator for purpose of improving discriminator performance. Experiments were conducted on both Pavia University and Indian Pines datasets, which show that AN-GAN could provide better classification performance comparing with state-of-the-art classification models.
机译:高光谱图像(HSI)通常由数百个连续频带组成,导致由于高维光谱特征和标记样本不足的像素级分类的挑战任务。在本文中,提出了一种用于半监督HSI分类的(AN-GAN)的基于自适应邻域策略的生成抗逆性网络。所提出的AN-GAN方法首先使用SuperPixel算法,例如,简单的线性迭代聚类(SLIC),以产生多个空间均匀的区域。此外,每个超像素用其光谱相似的邻居超像素合并。然后,对于重建的超像素,有限标记的样品用于训练判别器,并且利用大量未标记的样本来使用稀疏自动泊者产生噪声,并且还用于训练判别器以提高判别符号性能。实验是在帕维亚大学和印度松树数据集中进行的,表明An-GaN可以提供与最先进的分类模型相比的更好的分类性能。

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