--- tags: - audio - speech - chinese - mandarin - audiovisual - avsr - multimodal - far-field - multi-view - conversation license: cc-by-nc-sa-4.0 extra_gated_heading: "Data Application" extra_gated_description: | Please fill out the form below to apply for access to this dataset. Access will be granted only for academic and non-commercial research use. Please use your institutional email address and agree to the dataset license terms. extra_gated_button_content: "Submit Application" extra_gated_fields: First Name: type: text required: true Last Name: type: text required: true Affiliation (Research organization): type: text required: true Email Address (Please use institutional e-mail): type: text required: true I have read and agree to the license terms (CC BY-NC-SA 4.0): type: checkbox required: true --- ## 📘 Dataset Summary | **Property** | **Description** | | :------------------- | :-------------------------- | | **Language** | Chinese (Mandarin, ZH) | | **License** | CC BY-NC-SA 4.0 | | **Total Duration** | 102.19 hours | | **Speakers** | 171 foreground speakers | | **Scenes** | 5 real-world locations | | **Recording Style** | Conversational speech | | **Audio** | Near-field + far-field | | **Video** | Multi-view RGB facial video | | **Sampling Rate** | 16 kHz | | **Far-field Audio** | 8-channel | | **Video Resolution** | 256×256 @ 25 fps | --- ## 🎙️ Dataset Description AISHELL8-RealScene is a **public multi-scenario and multi-view audio-visual conversational corpus** recorded in real-world environments. Unlike most existing AVSR datasets collected under constrained frontal settings, AISHELL8-RealScene focuses on realistic conditions including: * environmental noise * viewpoint variation * speaker interference * background activities * outdoor scenes * conversational interactions The corpus was collected by AISHELL using a synchronized multi-device recording setup. --- ## 🏛️ Recording Environment AISHELL8-RealScene contains recordings from **five real-world locations**: | ID | Location | Type | | -- | -------- | ------- | | L1 | Building | Outdoor | | L2 | Hall | Indoor | | L3 | Hotel | Indoor | | L4 | Park | Outdoor | | L5 | Street | Outdoor | The recordings cover both indoor and outdoor scenarios. --- ## 🔊 Audio Specifications AISHELL8-RealScene provides both: * **near-field audio** * **far-field microphone-array audio** ### Near-field Audio Each foreground speaker wears a close-talking microphone used for transcription and alignment. ### Far-field Audio Far-field audio is recorded using: * circular microphone array * 16 microphones * 16 kHz * 16-bit To reduce release size while preserving spatial information, the public release provides: * **8-channel far-field audio** obtained by uniformly selecting microphones from the array. ### Audio Format * Format: `.wav` * Sampling rate: **16 kHz** * Near-field: single-channel * Far-field: 8-channel --- ## 🎥 Video Specifications Video is captured using **three synchronized HD RGB cameras**. ### Camera Views The three cameras are positioned horizontally with approximately **30° angular intervals**: * **D0** — left * **D1** — center * **D2** — right ### Video Parameters | Property | Value | | ---------- | ------------ | | Resolution | 256×256 | | Frame Rate | 25 fps | | Views | D0 / D1 / D2 | The released facial videos are: * **256×256** resolution * synchronized with audio --- ## 📊 Dataset Statistics ### Dataset Split | Split | Duration (h) | Sessions | Groups | Speakers | | ----- | -----------: | -------: | -----: | -------: | | Train | 79.84 | 133 | 56 | 133 | | Dev | 10.70 | 18 | 7 | 18 | | Eval | 11.65 | 20 | 7 | 20 | | Total | 102.19 | 171 | 70 | 171 | No speakers overlap across: * train * dev * eval All splits contain recordings from all five locations. --- ## 📜 License This dataset is released under: **CC BY-NC-SA 4.0** https://creativecommons.org/licenses/by-nc-sa/4.0/ --- ## 📄 Dataset Resources - 📄 **Paper:** [arXiv:](https://arxiv.org/abs/) - 🌐 **Demo:** [xxx.github.io/AISHELL8-RealScene](https://xxx.github.io/AISHELL8-RealScene/) --- ## 📜 Citation If you use AISHELL8-RealScene, please cite: ```bibtex @article{su2026m2savsr, title = {M2S-AVSR: Modality-aware Multi-view Self-supervised Representation for Robust Audio-Visual Speech Recognition}, author = {Su, Fei and Li, Cancan and Li, Ming and Liu, Juan}, journal = {}, year = {2026} } ```