Generating images for Supervised Hyperspectral Image Classification with Generative Adversarial Nets

Hassan Abdalla Abdelkarim Osman, N. Azlan
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引用次数: 2

Abstract

With the advancement of remote sensing technologies, hyperspectral imagery has garnered significant interest in the remote sensing community. These developments have inspired improvement in various hyperspectral images (HSI) classification applications, such as land cover mapping, amongst other earth observation applications. Deep Neural Networks have revolutionized image classification tasks in areas of computer vision. However, in the domain of hyperspectral images, insufficient training samples have been earmarked as a significant bottleneck for supervised HSI classification. Moreover, acquiring HSI from satellites and other remote sensors is expensive. Thus, researchers have turned to generative models to leverage the existing data to increase training samples, such as particularly generative adversarial networks (GAN). This paper explores the use of a vanilla GAN to generate synthetic data. The network employed in this paper was built using a deep learning python package, PyTorch and tested on a popular HSI dataset called Indian Pines dataset. The network achieved an overall accuracy of 64%. While promising, there is still room for improvement.
基于生成对抗网络的有监督高光谱图像分类生成
随着遥感技术的不断进步,高光谱图像已引起遥感界的广泛关注。这些发展激发了各种高光谱图像(HSI)分类应用的改进,例如土地覆盖测绘,以及其他地球观测应用。深度神经网络已经彻底改变了计算机视觉领域的图像分类任务。然而,在高光谱图像领域,训练样本不足已被指定为监督HSI分类的重大瓶颈。此外,从卫星和其他遥感器获取HSI是昂贵的。因此,研究人员已经转向生成模型来利用现有数据来增加训练样本,例如生成对抗网络(GAN)。本文探讨了使用香草GAN来生成合成数据。本文中使用的网络是使用深度学习python包PyTorch构建的,并在一个名为Indian Pines的流行HSI数据集上进行了测试。该网络的总体准确率达到64%。虽然有希望,但仍有改进的余地。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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