首页> 外国专利> Classification of multispectral or hyperspectral satellite imagery using clustering of sparse approximations on sparse representations in learned dictionaries obtained using efficient convolutional sparse coding

Classification of multispectral or hyperspectral satellite imagery using clustering of sparse approximations on sparse representations in learned dictionaries obtained using efficient convolutional sparse coding

机译:使用有效卷积稀疏编码获得的学习词典中的稀疏表示中的稀疏表示的聚类,对多光谱或高光谱卫星影像进行分类

摘要

An approach for land cover classification, seasonal and yearly change detection and monitoring, and identification of changes in man-made features may use a clustering of sparse approximations (CoSA) on sparse representations in learned dictionaries. The learned dictionaries may be derived using efficient convolutional sparse coding to build multispectral or hyperspectral, multiresolution dictionaries that are adapted to regional satellite image data. Sparse image representations of images over the learned dictionaries may be used to perform unsupervised k-means clustering into land cover categories. The clustering process behaves as a classifier in detecting real variability. This approach may combine spectral and spatial textural characteristics to detect geologic, vegetative, hydrologic, and man-made features, as well as changes in these features over time.
机译:一种用于土地覆盖分类,季节性和年度变化检测和监控以及识别人为特征变化的方法,可以对学习词典中的稀疏表示使用稀疏近似(CoSA)聚类。可以使用有效的卷积稀疏编码来推导学习到的字典,以建立适用于区域卫星图像数据的多光谱或高光谱,多分辨率字典。所学习词典上图像的稀疏图像表示可用于执行无监督k均值聚类,形成土地覆盖类别。聚类过程在检测实际可变性方面充当分类器。这种方法可以结合频谱和空间纹理特征来检测地质,营养,水文和人造特征,以及这些特征随时间的变化。

著录项

  • 公开/公告号US9858502B2

    专利类型

  • 公开/公告日2018-01-02

    原文格式PDF

  • 申请/专利权人 LOS ALAMOS NATIONAL SECURITY LLC;

    申请/专利号US201615134437

  • 发明设计人 DANIELA MOODY;BRENDT WOHLBERG;

    申请日2016-04-21

  • 分类号G06K9/62;G06K9;

  • 国家 US

  • 入库时间 2022-08-21 12:55:20

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