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Remote Sensing Image Classification Algorithm Based on Texture Feature and Extreme Learning Machine

机译:基于纹理特征和极端学习机的遥感图像分类算法

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摘要

With the development of satellite technology, the satellite imagery of the earth's surface and the whole surface makes it possible to survey surface resources and master the dynamic changes of the earth with high efficiency and low consumption. As an important tool for satellite remote sensing image processing, remote sensing image classification has become a hot topic. According to the natural texture characteristics of remote sensing images, this paper combines different texture features with the Extreme Learning Machine, and proposes a new remote sensing image classification algorithm. The experimental tests are carried out through the standard test dataset SAT-4 and SAT-6. Our results show that the proposed method is a simpler and more efficient remote sensing image classification algorithm. It also achieves 99.434% recognition accuracy on SAT-4, which is 1.5% higher than the 97.95% accuracy achieved by DeepSat. At the same time, the recognition accuracy of SAT-6 reaches 99.5728%, which is 5.6% higher than DeepSat's 93.9%.
机译:随着卫星技术的发展,地球表面和整个表面的卫星图像可以通过高效率和低消耗来调查地面资源并掌握地球的动态变化。作为卫星遥感图像处理的重要工具,遥感图像分类已成为一个热门话题。根据遥感图像的自然纹理特征,本文将不同的纹理特征与极限学习机相结合,并提出了一种新的遥感图像分类算法。实验测试通过标准测试数据集SAT-4和SAT-6进行。我们的结果表明,该方法是一种更简单且更高效的遥感图像分类算法。它还在SAT-4上实现了99.434%的识别准确性,比Deepsat实现的97.95%的精度高1.5%。与此同时,SAT-6的识别准确性达到99.5728%,比深度为93.9%的5.6%。

著录项

  • 来源
    《Computers, Materials & Continua》 |2020年第2期|1385-1395|共11页
  • 作者单位

    Media Computing Laboratory School of Information Engineering Minzu University of China Beijing 100081 China;

    School of Telecommunication Engineering Beijing Polytechnic Beijing 100176 China;

    Media Computing Laboratory School of Information Engineering Minzu University of China Beijing 100081 China National Language Resource Monitoring and Research Center of Minority Languages Minzu University of China Beijing 100081 China;

    Media Computing Laboratory School of Information Engineering Minzu University of China Beijing 100081 China;

    Media Computing Laboratory School of Information Engineering Minzu University of China Beijing 100081 China;

    New Jersey Institute of Technology Newark NJ 07102 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Image classification; gray level co-occurrence matrix; extreme learning machine;

    机译:图像分类;灰度共有矩阵;极端学习机器;

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