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arxiv:2605.22570

VGenST-Bench: A Benchmark for Spatio-Temporal Reasoning via Active Video Synthesis

Published on May 21
· Submitted by
Jinho Park
on May 25
Authors:
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Abstract

VGenST-Bench presents a video benchmark using generative models for active synthesis of controlled spatio-temporal reasoning scenarios with human quality control.

AI-generated summary

Spatio-temporal reasoning is a core capability for Multimodal Large Language Models (MLLMs) operating in the real world. As such, evaluating it precisely has become an essential challenge. However, existing spatio-temporal reasoning benchmark datasets primarily rely on static image sets or passively curated video data, which limits the evaluation of fine-grained reasoning capabilities. In this paper, we introduce VGenST-Bench, a video benchmark that employs generative models to actively synthesize highly controlled and diverse evaluation scenarios. To construct VGenST-Bench, we propose a multi-agent pipeline incorporating a human quality control stage, ensuring the quality of all generated videos and QA pairs. We establish a comprehensive 3x2x2 video taxonomy, encompassing Spatial Scale, Perspective, and Scene Dynamics to span diverse scenarios. Furthermore, we design a hierarchical task suite that decouples low-level visual perception from high-level spatio-temporal reasoning. By shifting the paradigm from passive curation to active synthesis, VGenST-Bench enables fine-grained diagnosis of spatio-temporal understanding in MLLMs.

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Awesome work!

Paper author Paper submitter
•
edited 2 days ago

We introduce VGenST-Bench — a video benchmark for spatio-temporal reasoning in MLLMs, built via active video synthesis.

Our multi-agent pipeline produces controlled videos across a 3×2×2 taxonomy (Spatial Scale × Perspective × Scene Dynamics) with 12 task categories and a 3-level QA hierarchy.

Project page: https://zinosii.github.io/VGenST-Bench/
Code: https://github.com/zinosii/VGenST-Bench

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