IRIS: A Real-World Benchmark for Inverse Recovery and Identification of Physical Dynamic Systems from Monocular Video
arXiv cs.CV / 3/18/2026
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Key Points
- IRIS introduces a high-fidelity real-world benchmark for inverse recovery and identification of physical dynamic systems from monocular video, comprising 220 real-world 4K/60fps sequences with independently measured ground-truth parameters and uncertainty estimates.
- It defines a standardized evaluation protocol that evaluates parameter accuracy, identifiability, extrapolation, robustness, and governing-equation selection.
- The work evaluates multiple baselines, including a multi-step physics loss and four equation-identification strategies—VLM temporal reasoning, describe-then-classify prompting, CNN-based classification, and path-based labelling—across IRIS scenarios.
- The dataset, annotations, evaluation toolkit, and all baseline implementations are publicly released to enable reproducible benchmarking.
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