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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Adaptive DropBlock-Enhanced Generative Adversarial Networks for Hyperspectral Image Classification
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Adaptive DropBlock-Enhanced Generative Adversarial Networks for Hyperspectral Image Classification

机译:用于高光谱图像分类的自适应丢弃增强的生成对抗网络

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In recent years, the hyperspectral image (HSI) classification based on generative adversarial networks (GANs) has achieved great progress. GAN-based classification methods can mitigate the limited training sample dilemma to some extent. However, several studies have pointed out that existing GAN-based HSI classification methods are heavily affected by the imbalanced training data problem. The discriminator in GAN always contradicts itself and tries to associate fake labels to the minority-class samples and, thus, impair the classification performance. Another critical issue is the mode collapse in GAN-based methods. The generator is only capable of producing samples within a narrow scope of the data space, which severely hinders the advancement of GAN-based HSI classification methods. In this article, we proposed an Adaptive DropBlock-enhanced Generative Adversarial Networks (ADGANs) for HSI classification. First, to solve the imbalanced training data problem, we adjust the discriminator to be a single classifier, and it will not contradict itself. Second, an adaptive DropBlock (AdapDrop) is proposed as a regularization method employed in the generator and discriminator to alleviate the mode collapse issue. The AdapDrop generated drop masks with adaptive shapes instead of a fixed size region, and it alleviates the limitations of DropBlock in dealing with ground objects with various shapes. Experimental results on three HSI data sets demonstrated that the proposed ADGAN achieved superior performance over state-of-the-art GAN-based methods. Our codes are available at https://github.com/summitgao/HC_ADGAN.
机译:近年来,基于生成的对抗性网络(GANS)的高光谱图像(HSI)分类取得了很大的进展。基于GAN的分类方法可以在一定程度上减轻有限的培训样本困境。然而,若干研究指出,现有的基于GaN的HSI分类方法受到不平衡培训数据问题的严重影响。 GaN中的鉴别者总是矛盾,并试图将假标签与少数阶级样本联系起来,从而损害分类性能。另一个关键问题是基于GaN的模式崩溃。发电机仅能够在数据空间的窄范围内产生样本,这严重阻碍了基于GaN的HSI分类方法的进步。在本文中,我们提出了一种自适应丢弃增强的生成对抗性网络(Adgans),用于HSI分类。首先,为了解决不平衡的培训数据问题,我们将鉴别器调整为单个分类器,它不会矛盾。其次,提出了一种自适应丢弃器(Adapdrop)作为在发电机和鉴别器中采用的正则化方法,以缓解模式崩溃问题。 adapdrop生成具有自适应形状而不是固定尺寸区域的拖放掩模,并且它减轻了丢包在处理具有各种形状的地面对象时的局限性。三个HSI数据集的实验结果表明,拟议的Adgan基于最先进的GAN方法取得了卓越的性能。我们的代码可在https://github.com/summitgao/hc_adgan获得。

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