Remote Sensing (Feb 2021)

Data Augmentation and Spectral Structure Features for Limited Samples Hyperspectral Classification

  • Wenning Wang,
  • Xuebin Liu,
  • Xuanqin Mou

DOI
https://doi.org/10.3390/rs13040547
Journal volume & issue
Vol. 13, no. 4
p. 547

Abstract

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For both traditional classification and current popular deep learning methods, the limited sample classification problem is very challenging, and the lack of samples is an important factor affecting the classification performance. Our work includes two aspects. First, the unsupervised data augmentation for all hyperspectral samples not only improves the classification accuracy greatly with the newly added training samples, but also further improves the classification accuracy of the classifier by optimizing the augmented test samples. Second, an effective spectral structure extraction method is designed, and the effective spectral structure features have a better classification accuracy than the true spectral features.

Keywords