--- dataset_info: features: - name: audio dtype: audio: sampling_rate: 16000 - name: conversation_id dtype: string - name: split dtype: string - name: utterance_idx sequence: int64 - name: abstract_symbol sequence: string - name: start_time sequence: float64 - name: end_time sequence: float64 - name: text sequence: string - name: duration_sec sequence: float64 - name: rir dtype: bool splits: - name: train num_bytes: 24925891266.516 num_examples: 1199 - name: validation num_bytes: 3108447220.0 num_examples: 137 - name: test num_bytes: 3172529166.0 num_examples: 160 download_size: 29092766585 dataset_size: 31206867652.516 configs: - config_name: default data_files: - split: train path: data/train-* - split: validation path: data/validation-* - split: test path: data/test-* --- # 🗣️ LibriConvo-Raw **LibriConvo-Raw** is the **full-length, unsegmented version** of the **LibriConvo** corpus — a **simulated two-speaker conversational dataset** created using *Speaker-Aware Conversation Simulation (SASC)*. It is designed for **training and evaluation of conversational speech systems**, particularly for **multi-speaker ASR**, **speaker diarization**, and **overlap detection**. Unlike the segmented release, this version contains **complete simulated dialogues** with natural temporal structure, pauses, and overlaps preserved exactly as modeled by SASC. The full paper describing the dataset generation, simulation pipeline, and baseline results is available at: 🔗 [https://arxiv.org/abs/2510.23320](https://arxiv.org/abs/2510.23320) --- ## 🧠 Overview **LibriConvo** ensures **natural conversational flow** and **contextual coherence** by: - Organizing LibriTTS utterances by **book** to maintain narrative continuity. - Using statistics from **CallHome** for pause modeling. - Applying **compression** to remove excessively long silences while preserving turn dynamics. - Enhancing **acoustic realism** via a novel **Room Impulse Response (RIR) selection procedure**, ranking configurations by spatial plausibility. - Producing **speaker-disjoint splits** for robust evaluation and generalization. In total, the full LibriConvo corpus comprises **240.1 hours** across **1,496 dialogues** with **830 unique speakers**. This version is particularly suited for **end-to-end conversational modeling**, **long-form ASR**, **diarization pretraining**, and **speaker interaction analysis**. --- ## 🎧 Dataset Summary | Split | # Conversations | Duration (approx.) | |:------|----------------:|-------------------:| | Train | 1,199 | ~193.7 hours | | Validation | 137 | ~23.1 hours | | Test | 160 | ~23.4 hours | **Total duration:** ~240.1 hours **Unique speakers:** 830 **Sampling rate:** 16 kHz **Audio format:** WAV (mono) **Split criterion:** Speaker-disjoint **RIR coverage:** ~40% of conversations include room impulse response convolution --- ## 📂 Data Structure Each row in the dataset represents a **complete two-speaker conversation** with full dialogue audio and time-aligned utterances. | Field | Type | Description | |:------|:----:|:------------| | `conversation_id` | string | Unique conversation identifier | | `split` | string | One of `train`, `validation`, or `test` | | `utterance_idx` | sequence(int64) | Ordered list of utterance indices | | `abstract_symbol` | sequence(string) | Speaker label sequence (`A` or `B`) | | `start_time` | sequence(float64) | Start time of each utterance (seconds) | | `end_time` | sequence(float64) | End time of each utterance (seconds) | | `text` | sequence(string) | Transcription of each utterance | | `duration_sec` | sequence(float64) | Duration of each utterance (seconds) | | `rir` | bool | Indicates if a Room Impulse Response was applied | | `audio` | Audio (16 kHz) | Full conversation waveform | --- ## 🗂️ Example ```python from datasets import load_dataset ds = load_dataset("gedeonmate/LibriConvo-raw") sample = ds["train"][0] print(sample["conversation_id"]) print(sample["text"][:5]) # First few utterances ``` --- 📚 Citation If you use the LibriConvo dataset or the associated Speaker-Aware Conversation Simulation (SASC) methodology in your research, please cite the following papers: ``` @misc{gedeon2025libriconvo, title = {LibriConvo: Simulating Conversations from Read Literature for ASR and Diarization}, author = {Máté Gedeon and Péter Mihajlik}, year = {2025}, eprint = {2510.23320}, archivePrefix = {arXiv}, primaryClass = {eess.AS}, url = {https://arxiv.org/abs/2510.23320} } ``` ``` @misc{gedeon2025sasc, title={From Independence to Interaction: Speaker-Aware Simulation of Multi-Speaker Conversational Timing}, author={Máté Gedeon and Péter Mihajlik}, year={2025}, eprint={2509.15808}, archivePrefix={arXiv}, primaryClass={cs.SD}, url={https://arxiv.org/abs/2509.15808}, } ```