Datasets:
license: cc-by-sa-4.0
task_categories:
- text-retrieval
- automatic-speech-recognition
language:
- en
- zh
tags:
- spoken-query-retrieval
- information-retrieval
- audio-text-retrieval
- mteb
- c-mteb
- robustness
pretty_name: SQuTR
size_categories:
- 10K<n<100K
SQuTR: A Robustness Benchmark for Spoken Query to Text Retrieval
SQuTR (Spoken Query-to-Text Retrieval) is a large-scale bilingual benchmark designed to evaluate the robustness of information retrieval systems under realistic acoustic perturbations.
While speech interaction is becoming a primary interface for IR systems, performance often degrades significantly in noisy environments. SQuTR provides a standardized framework featuring 37,317 complex queries across 6 domains, synthesized with 200 real speakers, and evaluated under 4 graded noise levels.
🌟 Key Features
- Bilingual & Multi-Domain: Includes 6 subsets from MTEB and C-MTEB covering Wikipedia, Finance, Medical, and Encyclopedia domains.
- High-Fidelity Synthesis: Generated using CosyVoice-3 with diverse speaker profiles, totaling 190.4 hours of audio.
- Robustness Evaluation: Explicitly models four acoustic conditions: Clean, Low Noise (20dB), Medium Noise (10dB), and High Noise (0dB).
- MTEB Compatibility: Follows standard JSONL/BEIR formatting for seamless integration into modern retrieval pipelines.
📂 Dataset Structure
The dataset is organized by language and subset. Each subset (e.g., fiqa) contains the original text documents and the synthesized audio queries under different SNR conditions.
SQuTR/
└── source_data/
├── en/ (English Datasets: fiqa, hotpotqa, nq)
│ └── [subset_name]/
│ ├── audio_clean/ # Clean original audio files (.wav)
│ ├── audio_noise_snr_0/ # Audio with 0dB Signal-to-Noise Ratio
│ ├── audio_noise_snr_10/ # Audio with 10dB Signal-to-Noise Ratio
│ ├── audio_noise_snr_20/ # Audio with 20dB Signal-to-Noise Ratio
│ ├── qrels/ # Query relevance judgments (TSV/JSONL)
│ ├── corpus.jsonl # Text corpus documents
│ ├── queries.jsonl # Original text queries
│ ├── queries_with_audio_clean.jsonl # Metadata mapping text to clean audio
│ ├── queries_with_audio_noise_snr_0.jsonl # Metadata for 0dB noise queries
│ ├── queries_with_audio_noise_snr_10.jsonl # Metadata for 10dB noise queries
│ └── queries_with_audio_noise_snr_20.jsonl # Metadata for 20dB noise queries
└── zh/ (Chinese Datasets: DuRetrieval, MedicalRetrieval, T2Retrieval)
└── [subset_name]/
└── (Same structure as above)
💾 How to Use the Dataset
You can download the dataset directly from this Hugging Face repository. To use the evaluation scripts, please refer to our GitHub Repository.