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📄 Abstract
Abstract: Super-resolution (SR) techniques play a pivotal role in enhancing the quality
of low-resolution images, particularly for applications such as security and
surveillance, where accurate license plate recognition is crucial. This study
proposes a novel framework that combines pixel-based loss with embedding
similarity learning to address the unique challenges of license plate
super-resolution (LPSR). The introduced pixel and embedding consistency loss
(PECL) integrates a Siamese network and applies contrastive loss to force
embedding similarities to improve perceptual and structural fidelity. By
effectively balancing pixel-wise accuracy with embedding-level consistency, the
framework achieves superior alignment of fine-grained features between
high-resolution (HR) and super-resolved (SR) license plates. Extensive
experiments on the CCPD and PKU dataset validate the efficacy of the proposed
framework, demonstrating consistent improvements over state-of-the-art methods
in terms of PSNR, SSIM, LPIPS, and optical character recognition (OCR)
accuracy. These results highlight the potential of embedding similarity
learning to advance both perceptual quality and task-specific performance in
extreme super-resolution scenarios.