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Morphe: High-Fidelity Generative Video Streaming with Vision Foundation Model

ArXivSource

Tianyi Gong, Zijian Cao, Zixing Zhang, Jiangkai Wu, Xinggong Zhang, Shuguang Cui, Fangxin Wang

cs.NI
cs.AI
cs.MM
|
Feb 3, 2026
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One-line Summary

Morphe is a new video streaming method that uses vision foundation models to achieve high visual quality and efficient bandwidth usage even in poor network conditions.

Plain-language Overview

Video streaming often suffers from poor quality in areas with limited internet bandwidth. Traditional methods have nearly reached their limits in terms of compression, and newer methods often struggle with latency and quality issues. Morphe introduces a novel approach using advanced vision models to improve video streaming, maintaining high visual quality while reducing the amount of data needed. This system also adapts to network conditions by intelligently managing data transmission, ensuring smooth and reliable video streaming even in challenging environments.

Technical Details