Temporal Transformer-Based Video Super-Resolution Reconstruction with Cross-Modal Attention

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Publicado en:Informatica vol. 49, no. 10 (Feb 2025), p. 179
Autor principal: Gong, Jingmin
Otros Autores: Xu, Qinfei
Publicado:
Slovenian Society Informatika / Slovensko drustvo Informatika
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Acceso en línea:Citation/Abstract
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Resumen:With the increasing demand for high-definition video, video super-resolution technology has become a key means to improve video picture quality. Traditional video super-resolution methods are limited by computational resources and model complexity, which struggle to meet the demands of modern video processing. In recent years, the rise of deep learning technology has brought a revolutionary breakthrough for video super-resolution. In this paper, we propose a deep learning-based video super-resolution reconstruction method that combines Transformer, cross-modal learning and fusion, and an attention mechanism. We design the Temporal Transformer-based Video Super-Resolution (TT-VSR) architecture, which significantly improves the accuracy and detail richness of video reconstruction by integrating the Transformer's self-attention mechanism with CNN's spatial feature extraction capabilities. The introduction of cross-modal learning and fusion, along with the cross-modal attention mechanism, further enhances the model's adaptability to complex scenes and detail recovery ability. Experimental results demonstrate that our model outperforms existing methods, achieving a PSNR ofXdB and an SSIM of Y, indicating substantial improvements in image quality. These results validate the efficacy of our approach and open a new path for the development of video super-resolution technology.
ISSN:0350-5596
1854-3871
DOI:10.31449/inf.v49i10.7146
Fuente:Advanced Technologies & Aerospace Database