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Autores principales: Zhou, Xingyu, Zhang, Leheng, Zhao, Xiaorui, Wang, Keze, Li, Leida, Gu, Shuhang
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2401.06312
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author Zhou, Xingyu
Zhang, Leheng
Zhao, Xiaorui
Wang, Keze
Li, Leida
Gu, Shuhang
author_facet Zhou, Xingyu
Zhang, Leheng
Zhao, Xiaorui
Wang, Keze
Li, Leida
Gu, Shuhang
contents Recently, Vision Transformer has achieved great success in recovering missing details in low-resolution sequences, i.e., the video super-resolution (VSR) task. Despite its superiority in VSR accuracy, the heavy computational burden as well as the large memory footprint hinder the deployment of Transformer-based VSR models on constrained devices. In this paper, we address the above issue by proposing a novel feature-level masked processing framework: VSR with Masked Intra and inter frame Attention (MIA-VSR). The core of MIA-VSR is leveraging feature-level temporal continuity between adjacent frames to reduce redundant computations and make more rational use of previously enhanced SR features. Concretely, we propose an intra-frame and inter-frame attention block which takes the respective roles of past features and input features into consideration and only exploits previously enhanced features to provide supplementary information. In addition, an adaptive block-wise mask prediction module is developed to skip unimportant computations according to feature similarity between adjacent frames. We conduct detailed ablation studies to validate our contributions and compare the proposed method with recent state-of-the-art VSR approaches. The experimental results demonstrate that MIA-VSR improves the memory and computation efficiency over state-of-the-art methods, without trading off PSNR accuracy. The code is available at https://github.com/LabShuHangGU/MIA-VSR.
format Preprint
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publishDate 2024
record_format arxiv
spellingShingle Video Super-Resolution Transformer with Masked Inter&Intra-Frame Attention
Zhou, Xingyu
Zhang, Leheng
Zhao, Xiaorui
Wang, Keze
Li, Leida
Gu, Shuhang
Computer Vision and Pattern Recognition
Recently, Vision Transformer has achieved great success in recovering missing details in low-resolution sequences, i.e., the video super-resolution (VSR) task. Despite its superiority in VSR accuracy, the heavy computational burden as well as the large memory footprint hinder the deployment of Transformer-based VSR models on constrained devices. In this paper, we address the above issue by proposing a novel feature-level masked processing framework: VSR with Masked Intra and inter frame Attention (MIA-VSR). The core of MIA-VSR is leveraging feature-level temporal continuity between adjacent frames to reduce redundant computations and make more rational use of previously enhanced SR features. Concretely, we propose an intra-frame and inter-frame attention block which takes the respective roles of past features and input features into consideration and only exploits previously enhanced features to provide supplementary information. In addition, an adaptive block-wise mask prediction module is developed to skip unimportant computations according to feature similarity between adjacent frames. We conduct detailed ablation studies to validate our contributions and compare the proposed method with recent state-of-the-art VSR approaches. The experimental results demonstrate that MIA-VSR improves the memory and computation efficiency over state-of-the-art methods, without trading off PSNR accuracy. The code is available at https://github.com/LabShuHangGU/MIA-VSR.
title Video Super-Resolution Transformer with Masked Inter&Intra-Frame Attention
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2401.06312