No Labels, No Look-Ahead: Unsupervised Online Video Stabilization with Classical Priors
AI 摘要
提出一种新的无监督在线视频稳定框架,无需配对数据,性能优于现有方法。
主要贡献
- 提出一种新的无监督在线视频稳定框架
- 设计了基于经典pipeline的多线程缓冲机制
- 构建了一个新的多模态无人机航拍视频数据集(UAV-Test)
方法论
采用经典稳定pipeline,结合多线程缓冲机制,实现无监督在线视频稳定。
原文摘要
We propose a new unsupervised framework for online video stabilization. Unlike methods based on deep learning that require paired stable and unstable datasets, our approach instantiates the classical stabilization pipeline with three stages and incorporates a multithreaded buffering mechanism. This design addresses three longstanding challenges in end-to-end learning: limited data, poor controllability, and inefficiency on hardware with constrained resources. Existing benchmarks focus mainly on handheld videos with a forward view in visible light, which restricts the applicability of stabilization to domains such as UAV nighttime remote sensing. To fill this gap, we introduce a new multimodal UAV aerial video dataset (UAV-Test). Experiments show that our method consistently outperforms state-of-the-art online stabilizers in both quantitative metrics and visual quality, while achieving performance comparable to offline methods.