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LinguaWave — Language Identification Competition

Pelatnas IOAI 2026 | Task 2 of 3

Identify the language of a 10-second speech clip from 8 languages. Compete to achieve the highest Macro F1-score on the test set.

Task

Input: .wav audio file (10 seconds, 16 kHz mono)
Output: Language code from {id, ms, vi, th, en, zh, ar, fr}
Metric: Macro F1-score

Languages

Code Language Region
id Indonesian Southeast Asia
ms Malay Southeast Asia
vi Vietnamese Southeast Asia
th Thai Southeast Asia
en English Global
zh Chinese (Mandarin) East Asia
ar Arabic Middle East
fr French Europe

Dataset

Split Samples Per-language
Train 8,000 1,000
Test 4,000 500

Source: Google FLEURS (CC BY 4.0)

File Structure

├── train/
│   ├── id/
│   │   └── *.wav
│   ├── ms/
│   │   └── *.wav
│   └── ...
├── test/
│   └── *.wav           # flat, unlabeled
├── train.csv           # id, label
├── test.csv            # id (no label)
├── sample_submission.csv
├── solution.csv        # ground truth
├── notebooks/          # 6 Colab-ready approaches
│   ├── 00_starter.ipynb
│   ├── 01_mfcc_svm.ipynb          # F1=0.9775
│   ├── 02_pitch_lgbm.ipynb        # F1=0.9594
│   ├── 03_bag_of_codewords.ipynb  # F1=0.6290
│   ├── 04_cnn_mel.ipynb           # F1~0.95
│   └── 05_multiscale_cnn.ipynb    # F1=0.9682
├── submissions/
└── writeup/
    └── writeup.md

How to Load

import pandas as pd, librosa
train_df = pd.read_csv("train.csv")
y, sr = librosa.load(f"train/{train_df.iloc[0]['id']}", sr=16000)
print(f"Language: {train_df.iloc[0]['label']}")  # e.g. 'id'

Notebooks (Colab-ready)

Notebook Approach Val Macro F1
01_mfcc_svm MFCC + SVM RBF 0.9775
02_pitch_lgbm Acoustic+Prosody + LightGBM 0.9594
03_bag_of_codewords k-means codebook + LogReg 0.6290
04_cnn_mel Log-mel (128×625) + CNN 0.8960
05_multiscale_cnn 3-branch CNN + hard-neg mining 0.9682

Tip: The hardest pair is Indonesian (id) vs Malay (ms) — they share ~60% vocabulary. Focus your improvements there.

Citation

FLEURS: Few-Shot Learning Evaluation of Universal Representations of Speech.
Conneau et al., SLT 2022.
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