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Tile-Based Semisupervised Classification of Large-Scale VHR Remote Sensing Images

机译:基于瓷砖的大型VHR遥感图像的半化分类

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摘要

This paper deals with the problem of the classification of large-scale very high-resolution (VHR) remote sensing (RS) images in a semisupervised scenario, where we have a limited training set (less than ten training samples per class). Typical pixel-based classification methods are unfeasible for large-scale VHR images. Thus, as a practical and efficient solution, we propose to subdivide the large image into a grid of tiles and then classify the tiles instead of classifying pixels. Our proposed method uses the power of a pretrained convolutional neural network (CNN) to first extract descriptive features from each tile. Next, a neural network classifier (composed of 2 fully connected layers) is trained in a semisupervised fashion and used to classify all remaining tiles in the image. This basically presents a coarse classification of the image, which is sufficient for many RS application. The second contribution deals with the employment of the semisupervised learning to improve the classification accuracy. We present a novel semisupervised approach which exploits both the spectral and spatial relationships embedded in the remaining unlabelled tiles. In particular, we embed a spectral graph Laplacian in the hidden layer of the neural network. In addition, we apply regularization of the output labels using a spatial graph Laplacian and the random Walker algorithm. Experimental results obtained by testing the method on two large-scale images acquired by the IKONOS2 sensor reveal promising capabilities of this method in terms of classification accuracy even with less than ten training samples per class.
机译:本文涉及在半体验方案中进行大规模非常高分辨率(VHR)遥感(RS)图像的分类问题,我们有一个有限的训练集(每班训练样本不到十个训练样本)。基于像素的分类方法对于大规模的VHR图像是不可行的。因此,作为一种实用且有效的解决方案,我们建议将大图像细分为瓦片网格,然后对瓦片进行分类而不是分类像素。我们所提出的方法使用预磨削的卷积神经网络(CNN)的力量来从每个瓦片中提取描述性功能。接下来,神经网络分类器(由2个完全连接的层组成)以半熟的方式训练,并用于对图像中的所有剩余瓷砖进行分类。这基本上提出了图像的粗略分类,这足以用于许多RS应用。第二款贡献涉及雇用半府学习,以提高分类准确性。我们提出了一种新颖的半体验方法,它利用嵌入剩余的未标记瓷砖中的光谱和空间关系。特别是,我们在神经网络的隐藏层中嵌入光谱图拉普拉斯。此外,我们使用空间图拉普拉斯和随机助行算法应用输出标签的正则化。通过在IKONOS2传感器获取的两个大规模图像上测试方法获得的实验结果显示了这种方法在分类准确性方面的有希望的能力,即使每级训练样本少于十个训练样本。

著录项

  • 来源
    《Journal of Sensors 》 |2018年第2期| 共14页
  • 作者单位

    King Saud Univ Coll Comp &

    Informat Sci Dept Comp Engn Riyadh Saudi Arabia;

    King Saud Univ Coll Comp &

    Informat Sci Dept Comp Engn Riyadh Saudi Arabia;

    King Saud Univ Coll Comp &

    Informat Sci Dept Comp Engn Riyadh Saudi Arabia;

    King Saud Univ Coll Comp &

    Informat Sci Dept Comp Engn Riyadh Saudi Arabia;

    King Saud Univ Coll Comp &

    Informat Sci Dept Comp Engn Riyadh Saudi Arabia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TP212;
  • 关键词

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