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Impact of Dimension Reduced Spectral Features on Open Set Domain Adaptation for Hyperspectral Image Classification

机译:维度降低频谱特征对高光谱图像分类的开放式域适应的影响

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Hyperspectral image classification has so many applications in the area of remote sensing. In recent years, deep learning has been accepted as a powerful tool for feature extraction and ensuring better classification accuracies. In this paper, model for HSI classification is created by implementing open set domain adaptation and generative adversarial networks (GAN). Open set domain adaptation is a type of domain adaptation where target has more classes which are not present in the source distribution. Huge dimension of hyperspectral image needs to be reduced for an efficient classification. In this work, we analysed the effect of dimensionality reduction for open set domain adaptation for hyperspectral image classification by using dynamic mode decomposition (DMD) technique. Experimental results show that 20% of the total available bands of Salinas and 30% of the bands of PaviaU dataset are the highest achievable reduction in feature dimension that results in almost same classification accuracy.
机译:高光谱图像分类在遥感领域具有如此多的应用。近年来,深入学习被接受为特征提取的强大工具,并确保更好的分类准确性。在本文中,通过实现开放式域适配和生成的对冲网络(GaN)来创建HSI分类的模型。打开Set域适应是一种域自适应,目标具有更多类别在源分发中不存在。需要减少高光谱图像的巨大维度以获得有效的分类。在这项工作中,我们通过使用动态模式分解(DMD)技术分析了开放式域改性的维度降低对高光谱图像分类的影响。实验结果表明,萨利纳斯总可用条带和30%的帕夫岛数据集的频段是具有几乎相同的分类准确性的最高可实现的减少。

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