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SongFormBench 🏆
[English | 中文]
A High-Quality Benchmark for Music Structure Analysis
Chunbo Hao1*, Ruibin Yuan2,5*, Jixun Yao1, Qixin Deng3,5,
Xinyi Bai4,5, Wei Xue2, Lei Xie1†
*Equal contribution †Corresponding author
1Audio, Speech and Language Processing Group (ASLP@NPU),
Northwestern Polytechnical University
2Hong Kong University of Science and Technology
3Northwestern University
4Cornell University
5Multimodal Art Projection (M-A-P)
🌟 What is SongFormBench?
SongFormBench is a carefully curated, expert-annotated benchmark designed to revolutionize music structure analysis (MSA) evaluation. Our dataset provides a unified standard for comparing MSA models.
📊 Dataset Composition
- 🎸 SongFormBench-HarmonixSet (BHX): 200 songs from HarmonixSet
- 🎤 SongFormBench-CN (BC): 100 Chinese popular songs
Total: 300 high-quality annotated songs
✨ Key Highlights
🎯 Unified Evaluation Standard
- Establishes a standardized benchmark for fair comparison across MSA models
- Eliminates inconsistencies in evaluation protocols
🏷️ Simple Label System
- Adopts the widely used 7-class classification system (as described in arxiv.org/abs/2205.14700 )
- Preserves pre-chorus segments for enhanced granularity
- Easy conversion to 7-class (pre-chorus → verse) for compatibility
👨🔬 Expert-Verified Quality
- Multi-source validation
- Manual corrections by expert annotators
🌏 Multilingual Coverage
- First Chinese MSA dataset (100 songs)
- Bridges the gap in Chinese music structure analysis
- Enables cross-lingual MSA research
🚀 Getting Started
Quick Load
from datasets import load_dataset
# Load the complete benchmark
dataset = load_dataset("ASLP-lab/SongFormBench")
📚 Resources & Links
- 📖 Paper: coming soon
- 💻 Code: GitHub Repository
- 🧑💻 Model: SongFormer
- 📂 Dataset: SongFormDB
🤝 Citation
@misc{hao2025songformer,
title = {SongFormer: Scaling Music Structure Analysis with Heterogeneous Supervision},
author = {Chunbo Hao and Ruibin Yuan and Jixun Yao and Qixin Deng and Xinyi Bai and Wei Xue and Lei Xie},
year = {2025},
eprint = {2510.02797},
archivePrefix = {arXiv},
primaryClass = {eess.AS},
url = {https://arxiv.org/abs/2510.02797}
}
🎼 Mel Spectrogram Details
Click to expand/collapse
Environment configuration can refer to the official implementation of BigVGan. If the audio source becomes invalid, you can reconstruct the audio using the following method.
🎸 SongFormBench-HarmonixSet
Uses official HarmonixSet mel spectrograms. To reproduce:
# Clone BigVGAN repository
git clone https://github.com/NVIDIA/BigVGAN.git
# Navigate to utils
cd utils/HarmonixSet
# Update BIGVGAN_REPO_DIR in inference_e2e.sh
# Run the inference script
bash inference_e2e.sh
🎤 SongFormBench-CN
Reproduce using bigvgan_v2_44khz_128band_256x
You should first download bigvgan_v2_44khz_128band_256x, then add its project directory to your PYTHONPATH, after which you can use the code below:
# See implementation
utils/CN/infer.py
📧 Contact
For questions, issues, or collaboration opportunities, please visit our GitHub repository or open an issue.
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