Gespeichert in:
Bibliographische Detailangaben
Hauptverfasser: Wang, Jiaqi, Wu, Weijia, Zhan, Yi, Zhao, Rui, Hu, Ming, Cheng, James, Liu, Wei, Torr, Philip, Lin, Kevin Qinghong
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2512.13281
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
_version_ 1866915988360921088
author Wang, Jiaqi
Wu, Weijia
Zhan, Yi
Zhao, Rui
Hu, Ming
Cheng, James
Liu, Wei
Torr, Philip
Lin, Kevin Qinghong
author_facet Wang, Jiaqi
Wu, Weijia
Zhan, Yi
Zhao, Rui
Hu, Ming
Cheng, James
Liu, Wei
Torr, Philip
Lin, Kevin Qinghong
contents With AI-generated videos increasingly indistinguishable from reality, current benchmarks primarily focus on broad semantic alignment and basic physical consistency, offering limited discriminative power for evaluating them. To address this, we introduce VideoASMR-Bench, a benchmark based on Autonomous Sensory Meridian Response (ASMR) videos that emphasizes fine-grained audio-visual perception and sensory immersion. This benchmark aims to answer two key questions: (i) Are today's video understanding models (VLMs) sensitive enough to detect AI-generated ASMR videos by recognizing minor visual, physical, or auditory artifacts? (ii) Can today's video generation models (VGMs) produce convincing ASMR videos with immersive experiences? This benchmark comprises a diverse set of 1,500 high-quality real ASMR videos curated from social media, alongside 2,235 synthetic counterparts generated by nine VGMs. Additionally, we open-source an extensible suite of prompts and reference images, enabling the benchmark to scale dynamically with future video models. Moreover, we design an automatic understanding-generation evaluation framework between VGMs and VLMs, where VGMs aim to produce realistic fake videos to fool the VLMs, while the VLMs seek to detect them, forming an adversarial game between the two parties. Our evaluation on VideoASMR-Bench reveals that even state-of-the-art VLMs, such as Gemini-3-Pro, fail to reliably detect AI-generated ASMR videos. Meanwhile, current frontier video generation models can produce ASMR videos that are difficult for VLMs to distinguish from real ones, while humans can still identify them relatively easily.
format Preprint
id arxiv_https___arxiv_org_abs_2512_13281
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle VideoASMR-Bench: Can AI-Generated ASMR Videos Fool VLMs and Humans?
Wang, Jiaqi
Wu, Weijia
Zhan, Yi
Zhao, Rui
Hu, Ming
Cheng, James
Liu, Wei
Torr, Philip
Lin, Kevin Qinghong
Computer Vision and Pattern Recognition
With AI-generated videos increasingly indistinguishable from reality, current benchmarks primarily focus on broad semantic alignment and basic physical consistency, offering limited discriminative power for evaluating them. To address this, we introduce VideoASMR-Bench, a benchmark based on Autonomous Sensory Meridian Response (ASMR) videos that emphasizes fine-grained audio-visual perception and sensory immersion. This benchmark aims to answer two key questions: (i) Are today's video understanding models (VLMs) sensitive enough to detect AI-generated ASMR videos by recognizing minor visual, physical, or auditory artifacts? (ii) Can today's video generation models (VGMs) produce convincing ASMR videos with immersive experiences? This benchmark comprises a diverse set of 1,500 high-quality real ASMR videos curated from social media, alongside 2,235 synthetic counterparts generated by nine VGMs. Additionally, we open-source an extensible suite of prompts and reference images, enabling the benchmark to scale dynamically with future video models. Moreover, we design an automatic understanding-generation evaluation framework between VGMs and VLMs, where VGMs aim to produce realistic fake videos to fool the VLMs, while the VLMs seek to detect them, forming an adversarial game between the two parties. Our evaluation on VideoASMR-Bench reveals that even state-of-the-art VLMs, such as Gemini-3-Pro, fail to reliably detect AI-generated ASMR videos. Meanwhile, current frontier video generation models can produce ASMR videos that are difficult for VLMs to distinguish from real ones, while humans can still identify them relatively easily.
title VideoASMR-Bench: Can AI-Generated ASMR Videos Fool VLMs and Humans?
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.13281