Video Coding Based on Ladder Subband Recovery and ResGroup Module
Libo Wei, Aolin Zhang, Lei Liu, Jun Wang, Shuai Wang

TL;DR
This paper introduces a new video encoding framework that improves image reconstruction by combining wavelet transforms and attention mechanisms.
Contribution
The novel LadderConv framework and ResGroup module enhance video frame reconstruction by focusing on high-frequency details and reducing information loss.
Findings
The LadderConv framework improves video frame encoding by progressively recovering wavelet subbands.
The ResGroup module enhances network performance through multi-level feature extraction and residual connections.
The proposed method achieves superior results in high-frequency detail recovery and image clarity.
Abstract
With the rapid development of video encoding technology in the field of computer vision, the demand for tasks such as video frame reconstruction, denoising, and super-resolution has been continuously increasing. However, traditional video encoding methods typically focus on extracting spatial or temporal domain information, often facing challenges of insufficient accuracy and information loss when reconstructing high-frequency details, edges, and textures of images. To address this issue, this paper proposes an innovative LadderConv framework, which combines discrete wavelet transform (DWT) with spatial and channel attention mechanisms. By progressively recovering wavelet subbands, it effectively enhances the video frame encoding quality. Specifically, the LadderConv framework adopts a stepwise recovery approach for wavelet subbands, first processing high-frequency detail subbands with…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Image and Signal Denoising Methods · Image Enhancement Techniques
