BHCast: Unlocking Black Hole Plasma Dynamics from a Single Blurry Image with Long-Term Forecasting
arXiv cs.CV / 3/31/2026
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Key Points
- BHCast is a neural forecasting framework that converts a single, blurry black hole image (e.g., EHT-like snapshots) into predicted future frames to reveal accretion-flow dynamics that static images cannot show.
- The method uses a multi-scale pyramid loss to enable autoregressive long-horizon forecasting while simultaneously super-resolving and evolving the initial blurry frame into a stable, coherent “movie.”
- It extracts interpretable spatio-temporal plasma features from the forecasts—such as pattern speed (rotation rate) and pitch angle—to bridge from learned dynamics to physical quantities.
- BHCast then applies gradient-boosting trees to infer black hole properties like spin and viewing inclination from those plasma features, with the forecasting/inference split improving modularity, interpretability, and uncertainty quantification.
- The approach is demonstrated on both simulated accretion systems (Sagittarius A* and M87*) and on real EHT images of M87*, suggesting a scalable paradigm for inverse problems from resolution-limited scientific data.
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