SeedVR (from the ByteDance-Seed organization) is an open-source research and implementation repository focused on cutting-edge video restoration using diffusion transformer architectures. The project includes both the original SeedVR and its successor SeedVR2 models, which are designed to restore degraded or low-quality video content by learning to reconstruct high-fidelity frames with temporal coherence. These models leverage advanced techniques such as adaptive attention mechanisms and adversarial training to produce visually appealing results in a single inference step, pushing the boundaries of video restoration research. SeedVR’s transformer-based design allows it to handle variable frame resolutions and lengths, and its architecture is optimized to overcome traditional limitations of windowed attention in high-resolution contexts.

Features

  • Diffusion transformer models for advanced video restoration
  • One-step high-quality frame reconstruction
  • Temporal coherence across video sequences
  • Adaptive window attention for flexible resolution handling
  • Research-oriented implementations with training code
  • Configurable for experimental and production use

Project Samples

Project Activity

See All Activity >