Abstract:
In this letter, we propose an improved locally linear embedding (LLE) method based on robust spatial information (named RSLLE) for hyperspectral data dimensionality reduc...Show MoreMetadata
Abstract:
In this letter, we propose an improved locally linear embedding (LLE) method based on robust spatial information (named RSLLE) for hyperspectral data dimensionality reduction. It explores and takes full account of the complexity of the spatial information for LLE. In RSLLE, when searching for spectral neighbors, a kind of spectral-spatial distance is used instead of the distance between two individual target pixels. Then, two additional steps, i.e., spatial neighbor sorting and spatial neighbor filtering, are presented to ensure the robustness of the spectral-spatial distance. Two classification experimental results indicate that the proposed RSLLE method significantly improves the performance when compared with other LLE methods, and the classification accuracy is competitive compared with other latest spectral-spatial classification methods.
Published in: IEEE Geoscience and Remote Sensing Letters ( Volume: 11, Issue: 10, October 2014)
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- IEEE Keywords
- Index Terms
- Dimensionality Reduction ,
- Spatial Information ,
- Robust Information ,
- Locally Linear Embedding ,
- Classification Accuracy ,
- Complex Information ,
- Hyperspectral Data ,
- Individual Pixels ,
- Spatial Neighborhood ,
- Latest Methods ,
- Latest Classification ,
- Support Vector Machine ,
- Spectral Bands ,
- Support Vector Machine Classifier ,
- Selection Rules ,
- Central Pixel ,
- Spectral Similarity ,
- Set Of Spectra ,
- Spectral Angle Mapper ,
- Indian Pines ,
- Overall Accuracy Values
- Author Keywords
- Author Free Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Dimensionality Reduction ,
- Spatial Information ,
- Robust Information ,
- Locally Linear Embedding ,
- Classification Accuracy ,
- Complex Information ,
- Hyperspectral Data ,
- Individual Pixels ,
- Spatial Neighborhood ,
- Latest Methods ,
- Latest Classification ,
- Support Vector Machine ,
- Spectral Bands ,
- Support Vector Machine Classifier ,
- Selection Rules ,
- Central Pixel ,
- Spectral Similarity ,
- Set Of Spectra ,
- Spectral Angle Mapper ,
- Indian Pines ,
- Overall Accuracy Values
- Author Keywords
- Author Free Keywords