librispeech_female / README.md
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metadata
license: mit
language: en
tags:
  - pathological-speech
  - speech-synthesis
  - tts
  - voice-conversion
  - healthy
  - librispeech

Librispeech Female Dataset

Overview

This dataset contains healthy speech samples from a female speaker (211) in the LibriSpeech corpus, prepared for pathological speech synthesis research.

Speaker Information:

  • Speaker ID: 211
  • Corpus: LibriSpeech
  • Gender: Female
  • Speech Status: Healthy
  • Disorder Type: None
  • Severity: None

Dataset Statistics

  • Total Samples: 160
  • Total Duration: 0.41 hours
  • Sampling Rate: 24,000 Hz
  • Format: Audio arrays with transcriptions

Training Split

  • Samples: 130
  • Duration: 0.33 hours
  • Avg Duration: 9.1s
  • Duration Range: 2.0s - 17.1s
  • Avg Text Length: 141 characters

Test Split

  • Samples: 30
  • Duration: 0.08 hours
  • Avg Duration: 9.3s
  • Duration Range: 2.4s - 16.3s
  • Avg Text Length: 142 characters

Loading the Dataset

from datasets import load_dataset

# Load the dataset
dataset = load_dataset("your-username/librispeech_female")

# Access train and test splits
train_data = dataset['train']
test_data = dataset['test']

# Each sample contains:
# - 'audio': {'array': numpy_array, 'sampling_rate': 24000}
# - 'text': str (normalized transcription)

# Example usage
sample = train_data[0]
audio_array = sample['audio']['array']
transcription = sample['text']
sampling_rate = sample['audio']['sampling_rate']

Direct Training with Transformers

from transformers import Trainer
from datasets import load_dataset

# Load and use directly with Trainer (no preprocessing needed)
dataset = load_dataset("your-username/librispeech_female")
trainer = Trainer(
    train_dataset=dataset['train'],
    eval_dataset=dataset['test'],
    # ... other trainer arguments
)