PerceptionComp: A Video Benchmark for Complex Perception-Centric Reasoning
Abstract
We introduce PerceptionComp, a manually annotated benchmark for complex, long-horizon, perception-centric video reasoning. PerceptionComp is designed so that no single moment is sufficient: answering each question requires multiple temporally separated pieces of visual evidence and compositional constraints under conjunctive and sequential logic, spanning perceptual subtasks such as objects, attributes, relations, locations, actions, and events, and requiring skills including semantic recognition, visual correspondence, temporal reasoning, and spatial reasoning. The benchmark contains 1,114 highly complex questions on 279 videos from diverse domains including city walk tours, indoor villa tours, video games, and extreme outdoor sports, with 100% manual annotation. Human studies show that PerceptionComp requires substantial test-time thinking and repeated perception steps: participants take much longer than on prior benchmarks, and accuracy drops to near chance (18.97%) when rewatching is disallowed. State-of-the-art MLLMs also perform substantially worse on PerceptionComp than on existing benchmarks: the best model in our evaluation, Gemini-3-Flash, reaches only 45.96% accuracy in the five-choice setting, while open-source models remain below 40%. These results suggest that perception-centric long-horizon video reasoning remains a major bottleneck, and we hope PerceptionComp will help drive progress in perceptual reasoning.
Cite
@article{arxiv.2603.26653,
title = {PerceptionComp: A Video Benchmark for Complex Perception-Centric Reasoning},
author = {Shaoxuan Li and Zhixuan Zhao and Hanze Deng and Zirun Ma and Shulin Tian and Zuyan Liu and Yushi Hu and Haoning Wu and Yuhao Dong and Benlin Liu and Ziwei Liu and Ranjay Krishna},
journal= {arXiv preprint arXiv:2603.26653},
year = {2026}
}
Comments
Project Page: https://perceptioncomp.github.io