VRVVC: Variable-Rate NeRF-Based Volumetric Video Compression
Qiang Hu, Houqiang Zhong, Zihan Zheng, Xiaoyun Zhang, Zhengxue Cheng,, Li Song, Guangtao Zhai, Yanfeng Wang

TL;DR
VRVVC introduces a novel end-to-end variable-rate framework for NeRF-based volumetric video compression, enabling efficient storage and transmission with superior rate-distortion performance across multiple bitrates.
Contribution
It presents the first joint optimization approach for variable-rate NeRF-based volumetric video compression using a single model.
Findings
Achieves a wide range of variable bitrates with a single model.
Surpasses existing methods in rate-distortion performance.
Effectively reduces temporal redundancy in dynamic scenes.
Abstract
Neural Radiance Field (NeRF)-based volumetric video has revolutionized visual media by delivering photorealistic Free-Viewpoint Video (FVV) experiences that provide audiences with unprecedented immersion and interactivity. However, the substantial data volumes pose significant challenges for storage and transmission. Existing solutions typically optimize NeRF representation and compression independently or focus on a single fixed rate-distortion (RD) tradeoff. In this paper, we propose VRVVC, a novel end-to-end joint optimization variable-rate framework for volumetric video compression that achieves variable bitrates using a single model while maintaining superior RD performance. Specifically, VRVVC introduces a compact tri-plane implicit residual representation for inter-frame modeling of long-duration dynamic scenes, effectively reducing temporal redundancy. We further propose a…
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Taxonomy
TopicsImage Enhancement Techniques · Advanced Image Processing Techniques · Video Coding and Compression Technologies
MethodsFocus
