You need to agree to share your contact information to access this dataset

This repository is publicly accessible, but you have to accept the conditions to access its files and content.

Log in or Sign Up to review the conditions and access this dataset content.

NAUSS-Spoof50: A Multi-Task Arabic Speech Benchmark for Audio Spoofing Detection and Forgery Localization

Metadata and Documentation Release

Version: 1.0
License: Creative Commons Attribution Non-Commercial 4.0 (CC BY-NC 4.0)
Access: Metadata freely accessible. Audio files available upon request.


Overview

NAUSS-Spoof50 is a curated multi-task Arabic speech benchmark designed to support both fully synthetic spoofing detection and partially manipulated forgery localization within a unified evaluation framework. The dataset comprises 76,730 utterances from 50 native Arabic speakers with balanced gender distribution, recorded across three consumer-grade devices and two acoustic environments under a strict speaker-disjoint protocol.

This release provides metadata files and dataset documentation to support transparency and reproducibility. Raw audio files are not included in this public release due to participant privacy constraints and institutional security considerations. Audio access is available through the gated access procedure described below.


Dataset Summary

Property Value
Total utterances 76,730
Native speakers 50 (25 male, 25 female)
Recording devices 3 (mobile, laptop, microphone)
Acoustic environments 2 (clean, normal)
Spoofing paradigms 6 (HiFiGAN, BigVGAN, Encodec, MMS-Arabic, XTTS v2, ElevenLabs)
Bonafide utterances 16,200
Spoofed utterances 60,530
Forgery localization files 16,200
Annotation resolution 10 ms frame-level masks
Sampling rate 16 kHz
Utterance duration 5 seconds (fixed)
Language Arabic
Split protocol Speaker-disjoint (train/dev/eval)

Dataset Splits

Split Speakers Bonafide Spoofed Total
Train 35 10,035 44,267 54,302
Dev 7 2,915 10,608 13,523
Eval 8 3,250 5,655 8,905
Total 50 16,200 60,530 76,730

Speaker Organization

Speakers are assigned globally unique IDs (SPK001–SPK050) using a gender-grouped scheme:

Group Speaker IDs Count
Batch A Female SPK001–SPK015 15
Batch A Male SPK016–SPK030 15
Batch B Female SPK031–SPK040 10
Batch B Male SPK041–SPK050 10
Total SPK001–SPK050 50

Spoofing Paradigms

Generator Paradigm Total
HiFiGAN Neural vocoder 10,942
BigVGAN Neural vocoder 10,942
Encodec Neural codec 10,957
MMS-Arabic Text-to-speech 2,775
XTTS v2 Voice cloning 6,914
ElevenLabs Voice cloning 18,000
Total 60,530

Forgery Localization Subset

Transform Total Segments
Copy-paste 8,709
Pitch shift 7,441
Time warp 7,286
Local shift 7,267
Partial delete 5,614
Total 16,200 files / 43,800+ segments

Files in This Release

File Description
bonafide_metadata.csv Metadata for all 16,200 bonafide recordings
spoof_metadata.csv Metadata for all 60,530 spoofed recordings
forgery_metadata.csv Metadata for all 16,200 forgery localization files
README.md This file
DATA_DICTIONARY.md Column descriptions for all CSV files

File Naming Conventions

Bonafide:

NAUSS50_BF_{speaker_id}_{gender}_{environment}_{device}_{utterance_index}
Example: NAUSS50_BF_SPK010_female_clean_laptop_001

Spoofed:

NAUSS50_SP_{spoof_type}_{split}_{index}
Example: NAUSS50_SP_HiFiGAN_train_00001
         NAUSS50_SP_ElevenLabs_eval_00042

Forgery:

NAUSS50_FG_{split}_{index}
Example: NAUSS50_FG_train_00001
         NAUSS50_FG_eval_00042

Evaluation Protocols

Protocol 1 — Mixed Attack Detection: All spoofed samples combined regardless of generation method. Supports aggregate EER and minDCF evaluation.

Protocol 2 — Generator-Wise Analysis: Spoof detection evaluated separately per spoofing method. Supports per-generator EER comparison using the spoof_type field in spoof_metadata.csv.

Both protocols use the speaker-disjoint split. No speaker appears in more than one split.


Ethics and Privacy

This dataset was collected under approval from the Ethics Committee of Naif Arab University for Security Sciences (NAUSS) in 2024. Informed consent was obtained from all participants prior to recording. Due to participant privacy constraints and institutional security considerations, raw audio files are not publicly distributed.

This access model follows established practice for sensitive human speech and biometric datasets, including Bridge2AI Voice, TAME Pain, CHiME-9 ECHI, and the Speech Accessibility Project.


Requesting Full Dataset Access

Access to the complete NAUSS-Spoof50 audio dataset is available for non-commercial academic research through the gated access form on this page. Requests require:

  1. Name and institutional affiliation
  2. Brief description of intended research use
  3. Agreement to the Data Use Agreement (DUA)

Requests are reviewed within 30 days. The DUA prohibits redistribution, commercial use, and any attempt to identify participants from voice recordings.


Citation

If you use this metadata release or the NAUSS-Spoof50 benchmark in your research, please cite:

Moallim, M.; Alhaj, T.A.; Elhaj, F.A.; Darwish, T.
NAUSS-Spoof50: A Multi-Task Arabic Speech Benchmark for
Audio Spoofing Detection and Forgery Localization.
Signals, 2026. (Under Review)

Contact

Corresponding author: Dr. Taqwa Ahmed Alhaj
Email: talhaj@nauss.edu.sa
Institution: Center of Artificial Intelligence for Security, Naif Arab University for Security Sciences (NAUSS), Riyadh 14812, Saudi Arabia

Downloads last month
6