Trajectory-aware Shifted State Space Models for Online Video Super-Resolution

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Ali Nemati
4 days ago22 sec read33 views

Researchers introduced Trajectory-aware Shifted State Space Models (TS-Mamba) for online video super-resolution, which enhances long-range temporal modeling while maintaining computational efficiency. This method significantly improves video resolution restoration by efficiently aggregating spatio-temporal information and reducing complexity, offering content creators a powerful tool for high-quality video processing.

Read the full article at arXiv cs.CV (Vision)


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