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Main Authors: Cao, Zhe, Wang, Tao, Wang, Jiaming, Wang, Yanghai, Zhang, Yuanxing, Chen, Jialu, Deng, Miao, Wang, Jiahao, Guo, Yubin, Liao, Chenxi, Zhang, Yize, Zhang, Zhaoxiang, Liu, Jiaheng
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.21094
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author Cao, Zhe
Wang, Tao
Wang, Jiaming
Wang, Yanghai
Zhang, Yuanxing
Chen, Jialu
Deng, Miao
Wang, Jiahao
Guo, Yubin
Liao, Chenxi
Zhang, Yize
Zhang, Zhaoxiang
Liu, Jiaheng
author_facet Cao, Zhe
Wang, Tao
Wang, Jiaming
Wang, Yanghai
Zhang, Yuanxing
Chen, Jialu
Deng, Miao
Wang, Jiahao
Guo, Yubin
Liao, Chenxi
Zhang, Yize
Zhang, Zhaoxiang
Liu, Jiaheng
contents Text-to-Audio-Video (T2AV) generation aims to synthesize temporally coherent video and semantically synchronized audio from natural language, yet its evaluation remains fragmented, often relying on unimodal metrics or narrowly scoped benchmarks that fail to capture cross-modal alignment, instruction following, and perceptual realism under complex prompts. To address this limitation, we present T2AV-Compass, a unified benchmark for comprehensive evaluation of T2AV systems, consisting of 500 diverse and complex prompts constructed via a taxonomy-driven pipeline to ensure semantic richness and physical plausibility. Besides, T2AV-Compass introduces a dual-level evaluation framework that integrates objective signal-level metrics for video quality, audio quality, and cross-modal alignment with a subjective MLLM-as-a-Judge protocol for instruction following and realism assessment. Extensive evaluation of 11 representative T2AVsystems reveals that even the strongest models fall substantially short of human-level realism and cross-modal consistency, with persistent failures in audio realism, fine-grained synchronization, instruction following, etc. These results indicate significant improvement room for future models and highlight the value of T2AV-Compass as a challenging and diagnostic testbed for advancing text-to-audio-video generation.
format Preprint
id arxiv_https___arxiv_org_abs_2512_21094
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle T2AV-Compass: Towards Unified Evaluation for Text-to-Audio-Video Generation
Cao, Zhe
Wang, Tao
Wang, Jiaming
Wang, Yanghai
Zhang, Yuanxing
Chen, Jialu
Deng, Miao
Wang, Jiahao
Guo, Yubin
Liao, Chenxi
Zhang, Yize
Zhang, Zhaoxiang
Liu, Jiaheng
Computer Vision and Pattern Recognition
Text-to-Audio-Video (T2AV) generation aims to synthesize temporally coherent video and semantically synchronized audio from natural language, yet its evaluation remains fragmented, often relying on unimodal metrics or narrowly scoped benchmarks that fail to capture cross-modal alignment, instruction following, and perceptual realism under complex prompts. To address this limitation, we present T2AV-Compass, a unified benchmark for comprehensive evaluation of T2AV systems, consisting of 500 diverse and complex prompts constructed via a taxonomy-driven pipeline to ensure semantic richness and physical plausibility. Besides, T2AV-Compass introduces a dual-level evaluation framework that integrates objective signal-level metrics for video quality, audio quality, and cross-modal alignment with a subjective MLLM-as-a-Judge protocol for instruction following and realism assessment. Extensive evaluation of 11 representative T2AVsystems reveals that even the strongest models fall substantially short of human-level realism and cross-modal consistency, with persistent failures in audio realism, fine-grained synchronization, instruction following, etc. These results indicate significant improvement room for future models and highlight the value of T2AV-Compass as a challenging and diagnostic testbed for advancing text-to-audio-video generation.
title T2AV-Compass: Towards Unified Evaluation for Text-to-Audio-Video Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.21094