Task-Driven Dictionary Learning for Hyperspectral Image Classification with Structured Sparsity Constraints
Xiaoxia Sun, Nasser M. Nasrabadi, and Trac D. Tran

TL;DR
This paper introduces a supervised dictionary learning approach with structured sparsity constraints to enhance hyperspectral image classification, combining the benefits of joint sparse approximation and task-driven learning for improved accuracy.
Contribution
It proposes a novel method that enforces structured sparsity priors within task-driven dictionary learning, improving hyperspectral classification performance.
Findings
Outperforms existing sparse representation classifiers with structured priors.
Enforcing structured sparsity improves classification accuracy.
The method effectively combines supervised learning with structured sparsity constraints.
Abstract
Sparse representation models a signal as a linear combination of a small number of dictionary atoms. As a generative model, it requires the dictionary to be highly redundant in order to ensure both a stable high sparsity level and a low reconstruction error for the signal. However, in practice, this requirement is usually impaired by the lack of labelled training samples. Fortunately, previous research has shown that the requirement for a redundant dictionary can be less rigorous if simultaneous sparse approximation is employed, which can be carried out by enforcing various structured sparsity constraints on the sparse codes of the neighboring pixels. In addition, numerous works have shown that applying a variety of dictionary learning methods for the sparse representation model can also improve the classification performance. In this paper, we highlight the task-driven dictionary…
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