Dataset Viewer
Auto-converted to Parquet Duplicate
id
stringlengths
36
36
label
stringclasses
2 values
train/real/voiceguard_real_00000.wav
real
train/real/voiceguard_real_00001.wav
real
train/real/voiceguard_real_00002.wav
real
train/real/voiceguard_real_00003.wav
real
train/real/voiceguard_real_00004.wav
real
train/real/voiceguard_real_00005.wav
real
train/real/voiceguard_real_00006.wav
real
train/real/voiceguard_real_00007.wav
real
train/real/voiceguard_real_00008.wav
real
train/real/voiceguard_real_00009.wav
real
train/real/voiceguard_real_00010.wav
real
train/real/voiceguard_real_00011.wav
real
train/real/voiceguard_real_00012.wav
real
train/real/voiceguard_real_00013.wav
real
train/real/voiceguard_real_00014.wav
real
train/real/voiceguard_real_00015.wav
real
train/real/voiceguard_real_00016.wav
real
train/real/voiceguard_real_00017.wav
real
train/real/voiceguard_real_00018.wav
real
train/real/voiceguard_real_00019.wav
real
train/real/voiceguard_real_00020.wav
real
train/real/voiceguard_real_00021.wav
real
train/real/voiceguard_real_00022.wav
real
train/real/voiceguard_real_00023.wav
real
train/real/voiceguard_real_00024.wav
real
train/real/voiceguard_real_00025.wav
real
train/real/voiceguard_real_00026.wav
real
train/real/voiceguard_real_00027.wav
real
train/real/voiceguard_real_00028.wav
real
train/real/voiceguard_real_00029.wav
real
train/real/voiceguard_real_00030.wav
real
train/real/voiceguard_real_00031.wav
real
train/real/voiceguard_real_00032.wav
real
train/real/voiceguard_real_00033.wav
real
train/real/voiceguard_real_00034.wav
real
train/real/voiceguard_real_00035.wav
real
train/real/voiceguard_real_00036.wav
real
train/real/voiceguard_real_00037.wav
real
train/real/voiceguard_real_00038.wav
real
train/real/voiceguard_real_00039.wav
real
train/real/voiceguard_real_00040.wav
real
train/real/voiceguard_real_00041.wav
real
train/real/voiceguard_real_00042.wav
real
train/real/voiceguard_real_00043.wav
real
train/real/voiceguard_real_00044.wav
real
train/real/voiceguard_real_00045.wav
real
train/real/voiceguard_real_00046.wav
real
train/real/voiceguard_real_00047.wav
real
train/real/voiceguard_real_00048.wav
real
train/real/voiceguard_real_00049.wav
real
train/real/voiceguard_real_00050.wav
real
train/real/voiceguard_real_00051.wav
real
train/real/voiceguard_real_00052.wav
real
train/real/voiceguard_real_00053.wav
real
train/real/voiceguard_real_00054.wav
real
train/real/voiceguard_real_00055.wav
real
train/real/voiceguard_real_00056.wav
real
train/real/voiceguard_real_00057.wav
real
train/real/voiceguard_real_00058.wav
real
train/real/voiceguard_real_00059.wav
real
train/real/voiceguard_real_00060.wav
real
train/real/voiceguard_real_00061.wav
real
train/real/voiceguard_real_00062.wav
real
train/real/voiceguard_real_00063.wav
real
train/real/voiceguard_real_00064.wav
real
train/real/voiceguard_real_00065.wav
real
train/real/voiceguard_real_00066.wav
real
train/real/voiceguard_real_00067.wav
real
train/real/voiceguard_real_00068.wav
real
train/real/voiceguard_real_00069.wav
real
train/real/voiceguard_real_00070.wav
real
train/real/voiceguard_real_00071.wav
real
train/real/voiceguard_real_00072.wav
real
train/real/voiceguard_real_00073.wav
real
train/real/voiceguard_real_00074.wav
real
train/real/voiceguard_real_00075.wav
real
train/real/voiceguard_real_00076.wav
real
train/real/voiceguard_real_00077.wav
real
train/real/voiceguard_real_00078.wav
real
train/real/voiceguard_real_00079.wav
real
train/real/voiceguard_real_00080.wav
real
train/real/voiceguard_real_00081.wav
real
train/real/voiceguard_real_00082.wav
real
train/real/voiceguard_real_00083.wav
real
train/real/voiceguard_real_00084.wav
real
train/real/voiceguard_real_00085.wav
real
train/real/voiceguard_real_00086.wav
real
train/real/voiceguard_real_00087.wav
real
train/real/voiceguard_real_00088.wav
real
train/real/voiceguard_real_00089.wav
real
train/real/voiceguard_real_00090.wav
real
train/real/voiceguard_real_00091.wav
real
train/real/voiceguard_real_00092.wav
real
train/real/voiceguard_real_00093.wav
real
train/real/voiceguard_real_00094.wav
real
train/real/voiceguard_real_00095.wav
real
train/real/voiceguard_real_00096.wav
real
train/real/voiceguard_real_00097.wav
real
train/real/voiceguard_real_00098.wav
real
train/real/voiceguard_real_00099.wav
real
End of preview. Expand in Data Studio

VoiceGuard — Deepfake Audio Detection Competition

Pelatnas IOAI 2026 | Task 3 of 3

Detect whether a 4-second audio clip is real human speech or AI-generated (TTS/deepfake). Submit probability scores — AUROC is the metric.

Task

Input: .wav audio file (4 seconds, 16 kHz mono)
Output: score — probability (0–1) that the audio is fake
Metric: AUROC (Area Under ROC Curve)

Dataset

Split Real Fake Total
Train 2,874 2,874 5,748
Test 627 627 1,254
  • Real: LibriSpeech + VCTK corpus recordings
  • Fake: Generated by ≥3 TTS systems (Tacotron2, VITS, SpeechT5); test includes ≥1 unseen TTS system
  • Speaker-disjoint: test speakers ≠ train speakers

File Structure

├── train/
│   ├── real/
│   │   └── *.wav
│   └── fake/
│       └── *.wav
├── test/
│   └── *.wav           # flat, unlabeled
├── train.csv           # id, label (real/fake)
├── test.csv            # id (no label)
├── sample_submission.csv   # id, score=0.5
├── solution.csv        # ground truth: id, label
├── notebooks/          # 6 Colab-ready approaches
│   ├── 00_starter.ipynb
│   ├── 01_spectral_lr.ipynb    # AUROC=1.0000
│   ├── 02_acoustic_rf.ipynb    # AUROC=1.0000
│   ├── 03_lfcc_gbdt.ipynb      # AUROC=1.0000
│   ├── 04_cnn_mel.ipynb        # AUROC=1.0000
│   └── 05_rawnet.ipynb         # AUROC=1.0000
├── submissions/
└── writeup/
    └── writeup.md

Submission Format

id,score
test/voiceguard_00001.wav,0.92
test/voiceguard_00002.wav,0.04
...

Score = P(fake). Higher = more likely fake.

How to Load

import pandas as pd, librosa
train_df = pd.read_csv("train.csv")
train_df["label_int"] = (train_df["label"] == "fake").astype(int)
y, sr = librosa.load(f"train/{train_df.iloc[0]['id']}", sr=16000)

Notebooks (Colab-ready)

All approaches achieve AUROC=1.0 — the TTS artifacts are clearly distinguishable. Focus on understanding why each feature works.

Notebook Approach Val AUROC
01_spectral_lr Spectral flatness + HNR + MFCC → LogReg 1.0000
02_acoustic_rf Full acoustic features → ExtraTrees 1.0000
03_lfcc_gbdt LFCC + delta → GradientBoosting 1.0000
04_cnn_mel Mel (80×501) + CNN + BCELoss 1.0000
05_rawnet Raw waveform + SincConv + GRU 1.0000

Note: AUROC=1.0 means all approaches perfectly separate real from fake on this dataset. In production, use harder datasets like ASVspoof 2021 DF or In-the-Wild.

Why Anti-Spoofing Matters

Voice deepfakes enable voice phishing (vishing), identity fraud, and disinformation. Key benchmarks: ASVspoof 2021, ADD Challenge.

Citation

ASVspoof 2019: A large-scale public database of spoofed and genuine speech.
Wang et al., Computer Speech & Language, 2020.
Downloads last month
26