SMILE: A Super-resolution Guided Multi-task Learning Method for Hyperspectral Unmixing
This work addresses hyperspectral unmixing for remote sensing applications, but it is incremental as it builds on existing multitask learning approaches with added theoretical support.
The paper tackled the problem of hyperspectral unmixing being constrained by low spatial resolution by proposing a super-resolution guided multi-task learning method (SMILE), which validated task affinity and guaranteed convergence through theoretical analysis, with experiments on synthetic and real datasets substantiating its usefulness.
The performance of hyperspectral unmixing may be constrained by low spatial resolution, which can be enhanced using super-resolution in a multitask learning way. However, integrating super-resolution and unmixing directly may suffer two challenges: Task affinity is not verified, and the convergence of unmixing is not guaranteed. To address the above issues, in this paper, we provide theoretical analysis and propose super-resolution guided multi-task learning method for hyperspectral unmixing (SMILE). The provided theoretical analysis validates feasibility of multitask learning way and verifies task affinity, which consists of relationship and existence theorems by proving the positive guidance of super-resolution. The proposed framework generalizes positive information from super-resolution to unmixing by learning both shared and specific representations. Moreover, to guarantee the convergence, we provide the accessibility theorem by proving the optimal solution of unmixing. The major contributions of SMILE include providing progressive theoretical support, and designing a new framework for unmixing under the guidance of super-resolution. Our experiments on both synthetic and real datasets have substantiate the usefulness of our work.