license: cc-by-nc-4.0
task_categories:
- audio-classification
- video-text-to-text
- question-answering
language:
- en
size_categories:
- 1K<n<10K
tags:
- benchmark
- evaluation
- audio-visual
- synchronization
- vggsound
- multimodal
- mllm
pretty_name: 'VGGSync-3K: out-of-domain audio-visual sync benchmark'
configs:
- config_name: default
data_files:
- split: test
path: eval/test_3k.jsonl
VGGSync-3K · out-of-domain audio-visual sync benchmark
Out-of-domain evaluation set used in the paper When Vision Speaks for Sound.
Derived from VGGSoundSync, this 3,000-clip slice tests whether a video-capable MLLM can detect audio temporal offsets on everyday sound events outside the THUD in-domain training distribution.
Each item is one VGGSound clip in one of three conditions:
| Condition | Count | gt_synced |
gt_direction |
gt_offset_sec |
|---|---|---|---|---|
| Audio aligned (no shift) | 1,000 | true |
none |
0.0 |
| Audio shifted early | 1,000 | false |
early |
shift amount |
| Audio shifted delay | 1,000 | false |
delay |
shift amount |
Shift magnitudes span 4 difficulty levels (very_easy, easy, medium,
hard); synced clips are tagged difficulty=synced.
What's in this repo
| File | Description |
|---|---|
eval/test_3k.jsonl |
Test records — uid / label / paths / ground truth |
media.zip |
All referenced videos + audios |
How to use
# Download
hf download Rakancorle1/vggsync-3k --repo-type=dataset --local-dir vggsync-3k
cd vggsync-3k
# Unzip media — paths in JSONL resolve automatically
unzip -q media.zip
from datasets import load_dataset
ds = load_dataset("Rakancorle1/vggsync-3k")
Record schema
{
"uid": "-r3nM90RCNs_medium_early_0.5s",
"ytid": "-r3nM90RCNs",
"label": "sharpen knife",
"difficulty": "very_easy" | "easy" | "medium" | "hard" | "synced",
"video_path": "videos/<uid>.mp4",
"audio_path": "audios/<uid>.wav",
"gt_synced": true | false,
"gt_direction": "none" | "early" | "delay",
"gt_offset_sec": 0.0 // > 0 for shifted; sign implied by direction
}
uid follows the pattern <ytid>_<difficulty>_<direction>_<offset>s
for shifted clips, and <ytid> alone for synced clips.
Reference eval scripts
Paper evaluation code lives in the wvs-code repository on GitHub.
The JSONL is self-contained — video_path, audio_path, and the gt_*
fields are all you need to compare any model's output against ground truth.
Citation
@article{wen2026whenvisionspeaksforsound,
title = {When Vision Speaks for Sound},
author = {Xiaofei Wen and Wenjie Jacky Mo and Xingyu Fu and Rui Cai and
Tinghui Zhu and Wendi Li and Yanan Xie and Muhao Chen and Peng Qi},
year = {2026},
url = {https://arxiv.org/abs/2605.16403}
}
Please also cite the original VGGSoundSync work:
@InProceedings{Chen21b,
title = "Audio-Visual Synchronization in the Wild",
author = "Honglie Chen, Weidi Xie, Triantafyllos Afouras, Arsha Nagrani, Andrea Vedaldi, Andrew Zisserman",
booktitle = "BMVC",
year = "2021"}
Related releases
- Rakancorle1/thud-eval — in-domain audio-visual Clever Hans benchmark (sync / mute / swap)
- Rakancorle1/hans-10k — DPO training data
- Rakancorle1/hans-sft-4k — SFT training data
- Collection — everything in one place
License
This subset is released under CC-BY-NC-4.0 for the annotations and shifted-clip pairings. The underlying audio/video content is derived from VGGSound — please follow VGGSound's licensing terms when using or redistributing.