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Main Authors: Zhang, Mingfang, Pan, Jingjing, Kumar, Ashutosh, Saini, Rajat, Erdogan, Mustafa, Yang, Hsuan-Kung, Kang, Caixin, Huang, Yifei, Sato, Yoichi, Kong, Quan
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.23216
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author Zhang, Mingfang
Pan, Jingjing
Kumar, Ashutosh
Saini, Rajat
Erdogan, Mustafa
Yang, Hsuan-Kung
Kang, Caixin
Huang, Yifei
Sato, Yoichi
Kong, Quan
author_facet Zhang, Mingfang
Pan, Jingjing
Kumar, Ashutosh
Saini, Rajat
Erdogan, Mustafa
Yang, Hsuan-Kung
Kang, Caixin
Huang, Yifei
Sato, Yoichi
Kong, Quan
contents Cause-and-effect reasoning in video is a significant challenge for Vision-Language Models (VLMs), as it requires going beyond surface-level perception to a deeper understanding of causal mechanisms. However, existing benchmarks rarely provide the fine-grained, grounded evidence needed to rigorously evaluate this capability. To address this gap, we introduce CaST-Bench, a benchmark for Causal Chain-Grounded Spatio-Temporal Video Reasoning. CaST-Bench presents complex causal questions that require models to identify and localize a chain of multiple spatio-temporal evidences. Through a human-AI collaborative pipeline, we construct a high-quality dataset of 2,066 questions over 1,015 videos, with causal chains annotated by temporal segments and bounding-box tracks. Furthermore, we design a comprehensive evaluation suite with novel metrics that assess not only answer correctness but also the capability for visual evidence grounded reasoning. This grounding is crucial for improving accuracy by mitigating spurious correlations and for enhancing user trust by making models more transparent. Our experiments show that current VLMs struggle with causal questions, largely due to their limited ability to construct precise and grounded causal chains. This highlights an important direction for improving future VLMs.
format Preprint
id arxiv_https___arxiv_org_abs_2605_23216
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle CaST-Bench: Benchmarking Causal Chain-Grounded Spatio-Temporal Reasoning for Video Question Answering
Zhang, Mingfang
Pan, Jingjing
Kumar, Ashutosh
Saini, Rajat
Erdogan, Mustafa
Yang, Hsuan-Kung
Kang, Caixin
Huang, Yifei
Sato, Yoichi
Kong, Quan
Computer Vision and Pattern Recognition
Cause-and-effect reasoning in video is a significant challenge for Vision-Language Models (VLMs), as it requires going beyond surface-level perception to a deeper understanding of causal mechanisms. However, existing benchmarks rarely provide the fine-grained, grounded evidence needed to rigorously evaluate this capability. To address this gap, we introduce CaST-Bench, a benchmark for Causal Chain-Grounded Spatio-Temporal Video Reasoning. CaST-Bench presents complex causal questions that require models to identify and localize a chain of multiple spatio-temporal evidences. Through a human-AI collaborative pipeline, we construct a high-quality dataset of 2,066 questions over 1,015 videos, with causal chains annotated by temporal segments and bounding-box tracks. Furthermore, we design a comprehensive evaluation suite with novel metrics that assess not only answer correctness but also the capability for visual evidence grounded reasoning. This grounding is crucial for improving accuracy by mitigating spurious correlations and for enhancing user trust by making models more transparent. Our experiments show that current VLMs struggle with causal questions, largely due to their limited ability to construct precise and grounded causal chains. This highlights an important direction for improving future VLMs.
title CaST-Bench: Benchmarking Causal Chain-Grounded Spatio-Temporal Reasoning for Video Question Answering
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.23216