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Nonnegative Matrix Functional Factorization for Hyperspectral Unmixing With Nonuniform Spectral Sampling

Ting Wang, Jizhou Li, Michael K. Ng, Chao Wang

2023IEEE Transactions on Geoscience and Remote Sensing13 citationsDOI

Abstract

Unmixing is a crucial technique in analyzing hyperspectral imaging (HSI) data, which involves identifying the endmembers present in the data and estimating their abundance maps. Due to some practical constraints in atmospheric environment, HSI data is usually non-uniformly distributed along the spectral domain, which brings incomplete spectral information in the hyperspectral unmixing. To overcome this issue, we propose in this paper nonnegative matrix functional factorization (NMFF) which is an extension of classical nonnegative matrix factorization (NMF) for hyperspectral unmixing. In particular, we present a novel functional factorization model by incorporating the implicit neural representations (INR) to learn about endmembers. Our method effectively characterizes endmembers by learning a continuous representation through INR with positional encoding, capturing the non-uniform distribution of spectral wavelengths. This distinct approach streamlines NMFF’s iterative process for abundance extraction, bypassing the conventionally complex and cumbersome processing. When tested on various datasets, our hyperspectral unmixing approach consistently outperforms established techniques, showcasing the enhanced capabilities of our proposed model.

Topics & Concepts

Hyperspectral imagingNon-negative matrix factorizationMatrix decompositionComputer sciencePattern recognition (psychology)Artificial intelligenceSpectral signatureEndmemberRemote sensingGeographyQuantum mechanicsEigenvalues and eigenvectorsPhysicsRemote-Sensing Image ClassificationRemote Sensing and Land UseAdvanced Image Fusion Techniques
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