Abstract
Hyperspectral unmixing is an important technique for remote sensing image analysis. Among various unmixing techniques, nonnegative matrix factorization (NMF) shows unique advantage in providing a unified solution with well physical interpretation. In order to explore the geometric information of the hyperspectral data, graph regularization is often used to improve the NMF unmixing performance. It groups neighboring pixels, uses groups as graph vertices, and then assigns weights to connected vertices. The construction of neighborhood and the weights are normally determined by k -nearest neighbors or heat kernel in a deterministic process, which do not fully reveal the structural relationships among data. In this article, we introduce an adaptive graph to regularize a multilayer NMF (AGMLNMF) model for hyperspectral unmixing. In AGMLNMF, a graph is constructed based on the probabilities between neighbors. This enables the optimal neighborhood be automatically determined. Moreover, the weights of the graph are assigned based on the relationships among neighbors, which reflects the intrinsic structure of the complex data. Experiments on both synthetic and real datasets show that this method has outperformed several state-of-the-art unmixing approaches.
Highlights
H YPERSPECTRAL images contain rich spectral and spatial information that is key to identify the composition of ground scenes
In order to address this drawback, we propose a novel adaptive graph regularized multilayer nonnegative matrix factorization (NMF) (AGMLNMF) method for hyperspectral unmixing
The structure of the data may be more complex than a single-layer NMF can cope with. This can be better modeled by multilayer NMF (MLNMF), which makes iterative decomposition using multiple layers [42]
Summary
H YPERSPECTRAL images contain rich spectral and spatial information that is key to identify the composition of ground scenes. Multilayer NMF (MLNMF) [42], [43] decomposes a matrix into different layers, which can extract more useful information from the hyperspectral imagery and improve the unmixing performance. This method is extended into a manifold MLNMF [44], which uses graph to regularize MLNMF. In order to address this drawback, we propose a novel adaptive graph regularized multilayer NMF (AGMLNMF) method for hyperspectral unmixing. Compared with the traditional k-nearest neighbor-based graph construction methods, the proposed method generates the neighbors and the weights simultaneously, assigning the adaptive and optimal neighbors for each data point based on their local distances.
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More From: IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
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