Foveation-based Deep Video Compression without Motion Search
Meixu Chen, Richard Webb, Alan C. Bovik

TL;DR
This paper introduces Foveated MOVI-Codec, a deep learning-based video compression method that eliminates motion search by leveraging displaced frame differences and foveation masks, achieving high efficiency especially for VR content.
Contribution
The paper presents a novel end-to-end deep learning video codec that removes the need for motion search by exploiting statistical regularities and incorporates foveation masks for VR optimization.
Findings
Outperforms foveated H.264 and H.265 codecs on UVG dataset
Achieves high compression efficiency without motion prediction
Effectively utilizes foveation masks to optimize VR video compression
Abstract
The requirements of much larger file sizes, different storage formats, and immersive viewing conditions of VR pose significant challenges to the goals of acquiring, transmitting, compressing, and displaying high-quality VR content. At the same time, the great potential of deep learning to advance progress on the video compression problem has driven a significant research effort. Because of the high bandwidth requirements of VR, there has also been significant interest in the use of space-variant, foveated compression protocols. We have integrated these techniques to create an end-to-end deep learning video compression framework. A feature of our new compression model is that it dispenses with the need for expensive search-based motion prediction computations. This is accomplished by exploiting statistical regularities inherent in video motion expressed by displaced frame differences.…
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Taxonomy
TopicsVideo Coding and Compression Technologies · Image and Video Quality Assessment · Advanced Image Processing Techniques
