Lightweight Video Denoising using Aggregated Shifted Window Attention

2023 IEEE/CVF Winter Conference on Applications of Computer Vision (WACV)(2023)

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摘要
Video denoising is a fundamental problem in numerous computer vision applications. State-of-the-art attention-based denoising methods typically yield good results, but require vast amounts of GPU memory and usually suffer from very long computation times. Especially in the field of restoring digitized high-resolution historic films, these techniques are not applicable in practice. To overcome these issues, we introduce a lightweight video denoising network that combines efficient axial-coronal-sagittal (ACS) convolutions with a novel shifted window attention formulation (ASwin), which is based on the memory-efficient aggregation of self- and cross-attention across video frames. We numerically validate the performance and efficiency of our approach on synthetic Gaussian noise. Moreover, we train our network as a general-purpose blind denoising model for real-world videos, using a realistic noise synthesis pipeline to generate clean-noisy video pairs. A user study and non-reference quality assessment prove that our method outperforms the state-of-the-art on real-world historic videos in terms of denoising performance and temporal consistency.
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关键词
Algorithms: Computational photography,image and video synthesis,Low-level and physics-based vision,Machine learning architectures,formulations,and algorithms (including transfer,low-shot,semi-,self-,and un-supervised learning)
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