Deep Learning Integrated with Multiscale Pixel and Object Features for Hyperspectral Image Classification

Meng Zhang, L. Hong
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引用次数: 2

Abstract

The spectral resolution and spatial resolution of hyperspectral images are continuously improving, providing rich information for interpreting remote sensing image. How to improve the image classification accuracy has become the focus of many studies. Recently, Deep learning is capable to extract discriminating high-level abstract features for image classification task, and some interesting results have been acquired in image processing. However, when deep learning is applied to the classification of hyperspectral remote sensing images, the spectral-based classification method is short of spatial and scale information; the image patch-based classification method ignores the rich spectral information provided by hyperspectral images. In this study, a multi-scale feature fusion hyperspectral image classification method based on deep learning was proposed. Firstly, multiscale features were obtained by multi-scale segmentation. Then multiscale features were input into the convolution neural network to extract high-level features. Finally, the high-level features were used for classification. Experimental results show that the classification results of the fusion multi-scale features are better than the single-scale features and regional feature classification results.
基于多尺度像素和目标特征的深度学习高光谱图像分类
高光谱影像的光谱分辨率和空间分辨率不断提高,为遥感影像解译提供了丰富的信息。如何提高图像的分类精度已成为众多研究的焦点。近年来,深度学习能够为图像分类任务提取有区别的高级抽象特征,并在图像处理中获得了一些有趣的结果。然而,当深度学习应用于高光谱遥感图像分类时,基于光谱的分类方法缺乏空间和尺度信息;基于图像补丁的分类方法忽略了高光谱图像提供的丰富光谱信息。本研究提出了一种基于深度学习的多尺度特征融合高光谱图像分类方法。首先,通过多尺度分割得到多尺度特征;然后将多尺度特征输入到卷积神经网络中,提取高阶特征。最后,利用高级特征进行分类。实验结果表明,融合多尺度特征的分类结果优于单尺度特征和区域特征分类结果。
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