Offline and Online Optical Flow Enhancement for Deep Video Compression
Chuanbo Tang, Xihua Sheng, Zhuoyuan Li, Haotian Zhang, Li Li, Dong Liu

TL;DR
This paper proposes offline and online methods to enhance optical flow estimation in deep video compression, leading to significant bitrate savings without extra decoder complexity.
Contribution
It introduces a two-stage optical flow enhancement approach—offline fine-tuning with traditional codec info and online feature optimization—that improves compression efficiency.
Findings
Achieves 12.8% average bitrate reduction
Enhances optical flow quality for better compression
Does not increase decoder complexity
Abstract
Video compression relies heavily on exploiting the temporal redundancy between video frames, which is usually achieved by estimating and using the motion information. The motion information is represented as optical flows in most of the existing deep video compression networks. Indeed, these networks often adopt pre-trained optical flow estimation networks for motion estimation. The optical flows, however, may be less suitable for video compression due to the following two factors. First, the optical flow estimation networks were trained to perform inter-frame prediction as accurately as possible, but the optical flows themselves may cost too many bits to encode. Second, the optical flow estimation networks were trained on synthetic data, and may not generalize well enough to real-world videos. We address the twofold limitations by enhancing the optical flows in two stages: offline and…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Advanced Vision and Imaging · Video Coding and Compression Technologies
