Authors | Nasser Mehrshad,Seyyed Mohammadali Arghavan |
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Journal | Geocarto International |
Page number | 2031-2054 |
Serial number | 37 |
Volume number | 7 |
IF | 1.759 |
Paper Type | Full Paper |
Published At | 2020 |
Journal Type | Typographic |
Journal Country | Iran, Islamic Republic Of |
Journal Index | ISI،JCR،Scopus |
Abstract
Recently, deep learning (DL)-based methods have attracted increasing attention for hyperspectral images (HSIs) classification. However, the complex structure and limited number of labelled training samples of HSIs negatively affect the performance of DL models. In this paper, a spectral-spatial classification method is proposed based on the combination of local and global spatial information, including extended multi-attribute profiles and multiscale Gabor features, with sparse stacked autoencoder (GEAE). GEAE stacks the spatial and spectral information to form the fused features. Also, GEAE generates virtual samples using weighted average of available samples for expanding the training set so that many parameters of DL network can be learned optimally in limited labelled samples situations. Therefore, the similarity between samples is determined with distance metric learning to overcome the problems of Euclidean distance-based similarity metrics. The experimental results on three HSIs datasets demonstrate the effectiveness of the GEAE in comparison to some existing classification methods.
tags: Classificationhyperspectral imagelimited labelled samplesdeep learningstacked autoencoderGabor featureextended multi-attribute profile