TL;DR
This paper introduces a deterministic projection method based on the Johnson-Lindenstrauss lemma for discriminative dictionary learning, improving class separability and classification accuracy in high-dimensional data.
Contribution
It proposes a constructive, non-random projection matrix derived from Modified Supervised PCA that preserves data geometry and enhances discriminative dictionary learning.
Findings
Outperforms existing methods on OCR and face recognition datasets.
Provides better class separation in high-dimensional spaces.
Achieves improved classification accuracy with reduced complexity.
Abstract
Dimensionality reduction-based dictionary learning methods in the literature have often used iterative random projections. The dimensionality of such a random projection matrix is a random number that might not lead to a separable subspace structure in the transformed space. The convergence of such methods highly depends on the initial seed values used. Also, gradient descent-based updates might result in local minima. This paper proposes a constructive approach to derandomize the projection matrix using the Johnson-Lindenstrauss lemma. Rather than reducing dimensionality via random projections, a projection matrix derived from the proposed Modified Supervised PC analysis is used. A heuristic is proposed to decide the data perturbation levels and the dictionary atom's corresponding suitable description length. The projection matrix is derived in a single step, provides maximum…
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