Hyper-spectrum classification based on sparse representation model and auto-regressive model

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Abstract

A novel classification approach based on sparse representation model and auto-regressive model is presented to deal with spectral and spatial information underutilization effectively for hyper-spectrum classification. The combination dictionary is designed using sparse representation model and auto-regressive model. Sparse representation model is used to represent every spectral vector as sparse linear combination of the training samples on spectral dimension; auto-regressive model is added to constrain every spectral vector by its eight neighborhoods on spatial dimension. A new dictionary is constructed for every class to reduce the computation and reconstruction error. At last, the sparse problem is recovered by solving a constrained optimization of minimum reconstruction error and neighboring relativity. The classification of hyper-spectral image is determined by computing the minimum reconstruction error of testing samples and training samples. Simulation results show that the method improves the classification accuracy.

Original languageEnglish
Article number0330003
JournalGuangxue Xuebao/Acta Optica Sinica
Volume32
Issue number3
DOIs
StatePublished - Mar 2012

Keywords

  • Auto-regressive model
  • Hyper-spectrum
  • Minimum reconstruction error
  • Neighboring relativity
  • Remote sensing
  • Sparse representation

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