Enregistré dans:
Détails bibliographiques
Auteurs principaux: Tang, Zhengxu, Wang, Zizheng, Wang, Luning, Shuai, Zitao, Zhang, Chenhao, Qian, Siyu, Wu, Yirui, Wang, Bohao, Rao, Haosong, Yang, Zhenyu, Wu, Chenwei
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2510.13042
Tags: Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!
_version_ 1866908593785143296
author Tang, Zhengxu
Wang, Zizheng
Wang, Luning
Shuai, Zitao
Zhang, Chenhao
Qian, Siyu
Wu, Yirui
Wang, Bohao
Rao, Haosong
Yang, Zhenyu
Wu, Chenwei
author_facet Tang, Zhengxu
Wang, Zizheng
Wang, Luning
Shuai, Zitao
Zhang, Chenhao
Qian, Siyu
Wu, Yirui
Wang, Bohao
Rao, Haosong
Yang, Zhenyu
Wu, Chenwei
contents Text-to-video (T2V) generation models have made significant progress in creating visually appealing videos. However, they struggle with generating coherent sequential narratives that require logical progression through multiple events. Existing T2V benchmarks primarily focus on visual quality metrics but fail to evaluate narrative coherence over extended sequences. To bridge this gap, we present SeqBench, a comprehensive benchmark for evaluating sequential narrative coherence in T2V generation. SeqBench includes a carefully designed dataset of 320 prompts spanning various narrative complexities, with 2,560 human-annotated videos generated from 8 state-of-the-art T2V models. Additionally, we design a Dynamic Temporal Graphs (DTG)-based automatic evaluation metric, which can efficiently capture long-range dependencies and temporal ordering while maintaining computational efficiency. Our DTG-based metric demonstrates a strong correlation with human annotations. Through systematic evaluation using SeqBench, we reveal critical limitations in current T2V models: failure to maintain consistent object states across multi-action sequences, physically implausible results in multi-object scenarios, and difficulties in preserving realistic timing and ordering relationships between sequential actions. SeqBench provides the first systematic framework for evaluating narrative coherence in T2V generation and offers concrete insights for improving sequential reasoning capabilities in future models. Please refer to https://videobench.github.io/SeqBench.github.io/ for more details.
format Preprint
id arxiv_https___arxiv_org_abs_2510_13042
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SeqBench: Benchmarking Sequential Narrative Generation in Text-to-Video Models
Tang, Zhengxu
Wang, Zizheng
Wang, Luning
Shuai, Zitao
Zhang, Chenhao
Qian, Siyu
Wu, Yirui
Wang, Bohao
Rao, Haosong
Yang, Zhenyu
Wu, Chenwei
Computer Vision and Pattern Recognition
Artificial Intelligence
Text-to-video (T2V) generation models have made significant progress in creating visually appealing videos. However, they struggle with generating coherent sequential narratives that require logical progression through multiple events. Existing T2V benchmarks primarily focus on visual quality metrics but fail to evaluate narrative coherence over extended sequences. To bridge this gap, we present SeqBench, a comprehensive benchmark for evaluating sequential narrative coherence in T2V generation. SeqBench includes a carefully designed dataset of 320 prompts spanning various narrative complexities, with 2,560 human-annotated videos generated from 8 state-of-the-art T2V models. Additionally, we design a Dynamic Temporal Graphs (DTG)-based automatic evaluation metric, which can efficiently capture long-range dependencies and temporal ordering while maintaining computational efficiency. Our DTG-based metric demonstrates a strong correlation with human annotations. Through systematic evaluation using SeqBench, we reveal critical limitations in current T2V models: failure to maintain consistent object states across multi-action sequences, physically implausible results in multi-object scenarios, and difficulties in preserving realistic timing and ordering relationships between sequential actions. SeqBench provides the first systematic framework for evaluating narrative coherence in T2V generation and offers concrete insights for improving sequential reasoning capabilities in future models. Please refer to https://videobench.github.io/SeqBench.github.io/ for more details.
title SeqBench: Benchmarking Sequential Narrative Generation in Text-to-Video Models
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2510.13042