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Stratified Object-Oriented Image Classification Based on Remote Sensing Image Scene Division

机译:基于遥感图像场景划分的分层面向对象图像分类

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摘要

The traditional remote sensing image segmentation method uses the same set of parameters for the entire image. However, due to objects' scale-dependent nature, the optimal segmentation parameters for an overall image may not be suitable for all objects. According to the idea of spatial dependence, the same kind of objects, which have the similar spatial scale, often gather in the same scene and form a scene. Based on this scenario, this paper proposes a stratified object-oriented image analysis method based on remote sensing image scene division. +is method firstly uses middle semantic which can reflect an image's visual complexity to classify the remote sensing image into different scenes, and then within each scene, an improved grid search algorithm is employed to optimize the segmentation result of each scene, so that the optimal scale can be utmostly adopted for each scene. Because the complexity of data is effectively reduced by stratified processing, local scale optimization ensures the overall classification accuracy of the whole image, which is practically meaningful for remote sensing geo-application.
机译:传统的遥感图像分割方法使用相同的整个图像集合参数集。然而,由于对象的尺度依赖性性质,整体图像的最佳分割参数可能不适用于所有对象。根据空间依赖的概念,具有相似的空间刻度的相同类型的物体,通常在同一场景中聚集并形成场景。基于这种情况,本文提出了一种基于遥感图像场景划分的分层面向对象图像分析方法。 +是方法首先使用中间语义,可以反映图像的视觉复杂性,将遥感图像分类为不同的场景,然后在每个场景内,采用改进的网格搜索算法来优化每个场景的分段结果,使最佳结果优化每个场景都可以最大地采用缩放。由于通过分层处理有效地减少了数据的复杂性,因此本地规模优化可确保整个图像的整体分类准确性,这实际上是遥感地理应用的。

著录项

  • 来源
    《Journal of spectroscopy》 |2018年第1期|共11页
  • 作者单位

    School of Information Engineering China University of Geosciences 29 Xueyuan Road Haidian Beijing 100083 China;

    School of Information Engineering China University of Geosciences 29 Xueyuan Road Haidian Beijing 100083 China;

    School of Information Engineering China University of Geosciences 29 Xueyuan Road Haidian Beijing 100083 China;

    School of Information Engineering China University of Geosciences 29 Xueyuan Road Haidian Beijing 100083 China;

    Key Laboratory of Virtual Geographic Environment Ministry of Education Nanjing Normal University Nanjing Jiangsu China;

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

    Stratified Object-Oriented Image; Classification Based on Remote Sensing Image Scene Division;

    机译:分层面向对象图像;基于遥感图像场景划分的分类;

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