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Autori principali: Wang, Yunzhe, Xu, Runhui, Zheng, Kexin, Zhang, Tianyi, Kogundi, Jayavibhav Niranjan, Hans, Soham, Ustun, Volkan
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2603.24329
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author Wang, Yunzhe
Xu, Runhui
Zheng, Kexin
Zhang, Tianyi
Kogundi, Jayavibhav Niranjan
Hans, Soham
Ustun, Volkan
author_facet Wang, Yunzhe
Xu, Runhui
Zheng, Kexin
Zhang, Tianyi
Kogundi, Jayavibhav Niranjan
Hans, Soham
Ustun, Volkan
contents Multimodal LLMs are increasingly deployed as perceptual backbones for autonomous agents in 3D environments, from robotics to virtual worlds. These applications require agents to perceive rapid state changes, attribute actions to the correct entities, and reason about concurrent multi-agent behaviors from a first-person perspective, capabilities that existing benchmarks do not adequately evaluate. We introduce GameplayQA, a framework for evaluating agentic-centric perception and reasoning through video understanding. Specifically, we densely annotate multiplayer 3D gameplay videos at 1.22 labels/second, with time-synced, concurrent captions of states, actions, and events structured around a triadic system of Self, Other Agents, and the World, a natural decomposition for multi-agent environments. From these annotations, we refined 2.4K diagnostic QA pairs organized into three levels of cognitive complexity, accompanied by a structured distractor taxonomy that enables fine-grained analysis of where models hallucinate. Evaluation of frontier MLLMs reveals a substantial gap from human performance, with common failures in temporal and cross-video grounding, agent-role attribution, and handling the decision density of the game. We hope GameplayQA stimulates future research at the intersection of embodied AI, agentic perception, and world modeling.
format Preprint
id arxiv_https___arxiv_org_abs_2603_24329
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle GameplayQA: A Benchmarking Framework for Decision-Dense POV-Synced Multi-Video Understanding of 3D Virtual Agents
Wang, Yunzhe
Xu, Runhui
Zheng, Kexin
Zhang, Tianyi
Kogundi, Jayavibhav Niranjan
Hans, Soham
Ustun, Volkan
Computation and Language
Artificial Intelligence
Computer Vision and Pattern Recognition
Multimodal LLMs are increasingly deployed as perceptual backbones for autonomous agents in 3D environments, from robotics to virtual worlds. These applications require agents to perceive rapid state changes, attribute actions to the correct entities, and reason about concurrent multi-agent behaviors from a first-person perspective, capabilities that existing benchmarks do not adequately evaluate. We introduce GameplayQA, a framework for evaluating agentic-centric perception and reasoning through video understanding. Specifically, we densely annotate multiplayer 3D gameplay videos at 1.22 labels/second, with time-synced, concurrent captions of states, actions, and events structured around a triadic system of Self, Other Agents, and the World, a natural decomposition for multi-agent environments. From these annotations, we refined 2.4K diagnostic QA pairs organized into three levels of cognitive complexity, accompanied by a structured distractor taxonomy that enables fine-grained analysis of where models hallucinate. Evaluation of frontier MLLMs reveals a substantial gap from human performance, with common failures in temporal and cross-video grounding, agent-role attribution, and handling the decision density of the game. We hope GameplayQA stimulates future research at the intersection of embodied AI, agentic perception, and world modeling.
title GameplayQA: A Benchmarking Framework for Decision-Dense POV-Synced Multi-Video Understanding of 3D Virtual Agents
topic Computation and Language
Artificial Intelligence
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.24329