2021 IEEE International Conference on Acoustics, Speech and Signal Processing

6-11 June 2021 • Toronto, Ontario, Canada

Extracting Knowledge from Information

2021 IEEE International Conference on Acoustics, Speech and Signal Processing

6-11 June 2021 • Toronto, Ontario, Canada

Extracting Knowledge from Information
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Paper Detail

Paper IDIVMSP-14.3
Paper Title VARIATIONAL AUTOENCODERS FOR HYPERSPECTRAL UNMIXING WITH ENDMEMBER VARIABILITY
Authors Shuaikai Shi, Min Zhao, Lijun Zhang, Jie Chen, Northwestern Polytechnical University, China
SessionIVMSP-14: Hyperspectral Imaging
LocationGather.Town
Session Time:Wednesday, 09 June, 15:30 - 16:15
Presentation Time:Wednesday, 09 June, 15:30 - 16:15
Presentation Poster
Topic Image, Video, and Multidimensional Signal Processing: [IVELI] Electronic Imaging
IEEE Xplore Open Preview  Click here to view in IEEE Xplore
Abstract Spectral signatures are usually affected by variations in environmental conditions. Thus, spectral variability is one of the most significant problems in hyperspectral unmixing. Although there have been many spectral unmixing methods to address spectral variability, it is still a non-trivial task to model the endmember variability. This paper presents a variational autoencoder (VAE) framework for hyperspectral unmixing accounting for endmember variability. The endmembers are generated using the posterior distributions of the latent variables to describe their variability in the image. Compared with other existing distribution-based methods, our proposed method is able to fit an arbitrary distribution of endmembers for each material through the representation capacity of deep neural networks. Our proposed method is evaluated using both synthetic and real datasets. The unmixing results show the priority of our proposed method compared with other state-of-the-art unmixing methods.