Fast Semisupervised Unmixing Using Nonconvex Optimization
- URL: http://arxiv.org/abs/2401.12609v2
- Date: Mon, 30 Sep 2024 09:10:34 GMT
- Title: Fast Semisupervised Unmixing Using Nonconvex Optimization
- Authors: Behnood Rasti, Alexandre Zouaoui, Julien Mairal, Jocelyn Chanussot,
- Abstract summary: We introduce a novel convex convex model for semi/library-based unmixing.
We demonstrate the efficacy of Alternating Methods of sparse unsupervised unmixing.
- Score: 80.11512905623417
- License:
- Abstract: In this paper, we introduce a novel linear model tailored for semisupervised/library-based unmixing. Our model incorporates considerations for library mismatch while enabling the enforcement of the abundance sum-to-one constraint (ASC). Unlike conventional sparse unmixing methods, this model involves nonconvex optimization, presenting significant computational challenges. We demonstrate the efficacy of Alternating Methods of Multipliers (ADMM) in cyclically solving these intricate problems. We propose two semisupervised unmixing approaches, each relying on distinct priors applied to the new model in addition to the ASC: sparsity prior and convexity constraint. Our experimental results validate that enforcing the convexity constraint outperforms the sparsity prior for the endmember library. These results are corroborated across three simulated datasets (accounting for spectral variability and varying pixel purity levels) and the Cuprite dataset. Additionally, our comparison with conventional sparse unmixing methods showcases considerable advantages of our proposed model, which entails nonconvex optimization. Notably, our implementations of the proposed algorithms-fast semisupervised unmixing (FaSUn) and sparse unmixing using soft-shrinkage (SUnS)-prove considerably more efficient than traditional sparse unmixing methods. SUnS and FaSUn were implemented using PyTorch and provided in a dedicated Python package called Fast Semisupervised Unmixing (FUnmix), which is open-source and available at https://github.com/BehnoodRasti/FUnmix
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