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PhyCritic: Multimodal Critic Models for Physical AI

About

With the rapid development of large multimodal models, reliable judge and critic models have become essential for open-ended evaluation and preference alignment, providing pairwise preferences, numerical scores, and explanatory justifications for assessing model-generated responses. However, existing critics are primarily trained in general visual domains such as captioning or image question answering, leaving physical AI tasks involving perception, causal reasoning, and planning largely underexplored. We introduce PhyCritic, a multimodal critic model optimized for physical AI through a two-stage RLVR pipeline: a physical skill warmup stage that enhances physically oriented perception and reasoning, followed by self-referential critic finetuning, where the critic generates its own prediction as an internal reference before judging candidate responses, improving judgment stability and physical correctness. Across both physical and general-purpose multimodal judge benchmarks, PhyCritic achieves strong performance gains over open-source baselines and, when applied as a policy model, further improves perception and reasoning in physically grounded tasks.

Tianyi Xiong, Shihao Wang, Guilin Liu, Yi Dong, Ming Li, Heng Huang, Jan Kautz, Zhiding Yu• 2026

Related benchmarks

TaskDatasetResultRank
Egocentric daily-task planningEgoPlanBench2
Overall Success Rate42.3
26
Computer Vision EvaluationCV-Bench
Average Score79.7
22
Multimodal Reward ModelingVL-RewardBench
Accuracy57.3
17
Multimodal Reward ModelingMultimodal RewardBench
Accuracy65.9
17
Multimodal Reward ModelingPhyCritic-Bench
Overall Score68
8
Physical ReasoningCosmosReason1-Bench
Overall Score63.9
8
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