CVFeb 3, 2015

Classification of Hyperspectral Imagery on Embedded Grassmannians

arXiv:1502.00946v19 citations
Originality Incremental advance
AI Analysis

This work addresses hyperspectral image analysis for remote sensing or similar applications, presenting an incremental method based on manifold embeddings.

The authors tackled hyperspectral image classification by modeling signal variability on Grassmann manifolds, achieving up to 100% accuracy on two examples as manifold dimension increased, with sparse SVMs enabling dimension reduction without performance loss.

We propose an approach for capturing the signal variability in hyperspectral imagery using the framework of the Grassmann manifold. Labeled points from each class are sampled and used to form abstract points on the Grassmannian. The resulting points on the Grassmannian have representations as orthonormal matrices and as such do not reside in Euclidean space in the usual sense. There are a variety of metrics which allow us to determine a distance matrices that can be used to realize the Grassmannian as an embedding in Euclidean space. We illustrate that we can achieve an approximately isometric embedding of the Grassmann manifold using the chordal metric while this is not the case with geodesic distances. However, non-isometric embeddings generated by using a pseudometric on the Grassmannian lead to the best classification results. We observe that as the dimension of the Grassmannian grows, the accuracy of the classification grows to 100% on two illustrative examples. We also observe a decrease in classification rates if the dimension of the points on the Grassmannian is too large for the dimension of the Euclidean space. We use sparse support vector machines to perform additional model reduction. The resulting classifier selects a subset of dimensions of the embedding without loss in classification performance.

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