Anna Kohári
Also published as: Anna Kohari
2026
Toward Conversational Hungarian Speech Recognition: Introducing the BEA-Large and BEA-Dialogue Datasets
Máté Gedeon | Piroska Zsófia Barta | Peter Mihajlik | Tekla Etelka Graczi | Anna Kohári | Katalin Mády
Proceedings of the Fifteenth Language Resources and Evaluation Conference
Máté Gedeon | Piroska Zsófia Barta | Peter Mihajlik | Tekla Etelka Graczi | Anna Kohári | Katalin Mády
Proceedings of the Fifteenth Language Resources and Evaluation Conference
The advancement of automatic speech recognition (ASR) has been largely enhanced by extensive datasets in high-resource languages, while languages such as Hungarian remain underrepresented due to limited spontaneous and conversational corpora. To address this gap, we introduce two new datasets – BEA-Large and BEA-Dialogue – constructed from the previously unprocessed portions of the Hungarian speech corpus named BEA. BEA-Large extends BEA-Base with 255 hours of spontaneous speech from 433 speakers, enriched with detailed segment-level metadata. BEA-Dialogue, comprising 85 hours of spontaneous conversations, is a Hungarian speech corpus featuring natural dialogues partitioned into speaker-independent subsets, supporting research in conversational ASR and speaker diarization. We establish reproducible baselines on these datasets using publicly available ASR models, with the fine-tuned Fast Conformer model achieving word error rates as low as 14.18% on spontaneous and 4.8% on repeated speech. Diarization experiments yield diarization error rates between 12.46% and 17.40%, providing reference points for future improvements. The results highlight the persistent difficulty of conversational ASR, particularly due to disfluencies, overlaps, and informal speech patterns. By releasing these datasets and baselines, we aim to advance Hungarian speech technology and offer a methodological framework for developing spontaneous and conversational benchmarks in other languages.
2024
Is Spoken Hungarian Low-resource?: A Quantitative Survey of Hungarian Speech Data Sets
Peter Mihajlik | Katalin Mády | Anna Kohári | Fruzsina Sára Fruzsina | Gábor Kiss | Tekla Etelka Gráczi | A. Seza Doğruöz
Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)
Peter Mihajlik | Katalin Mády | Anna Kohári | Fruzsina Sára Fruzsina | Gábor Kiss | Tekla Etelka Gráczi | A. Seza Doğruöz
Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)
Even though various speech data sets are available in Hungarian, there is a lack of a general overview about their types and sizes. To fill in this gap, we provide a survey of available data sets in spoken Hungarian in five categories (e.g., monolingual, Hungarian part of multilingual, pathological, child-related and dialectal collections). In total, the estimated size of available data is about 2800 hours (across 7500 speakers) and it represents a rich spoken language diversity. However, the distribution of the data and its alignment to real-life (e.g. speech recognition) tasks is far from optimal indicating the need for additional larger-scale natural language speech data sets. Our survey presents an overview of available data sets for Hungarian explaining their strengths and weaknesses which is useful for researchers working on Hungarian across disciplines. In addition, our survey serves as a starting point towards a unified foundational speech model specific to Hungarian.
2022
BEA-Base: A Benchmark for ASR of Spontaneous Hungarian
Peter Mihajlik | Andras Balog | Tekla Etelka Graczi | Anna Kohari | Balázs Tarján | Katalin Mady
Proceedings of the Thirteenth Language Resources and Evaluation Conference
Peter Mihajlik | Andras Balog | Tekla Etelka Graczi | Anna Kohari | Balázs Tarján | Katalin Mady
Proceedings of the Thirteenth Language Resources and Evaluation Conference
Hungarian is spoken by 15 million people, still, easily accessible Automatic Speech Recognition (ASR) benchmark datasets – especially for spontaneous speech – have been practically unavailable. In this paper, we introduce BEA-Base, a subset of the BEA spoken Hungarian database comprising mostly spontaneous speech of 140 speakers. It is built specifically to assess ASR, primarily for conversational AI applications. After defining the speech recognition subsets and task, several baselines – including classic HMM-DNN hybrid and end-to-end approaches augmented by cross-language transfer learning – are developed using open-source toolkits. The best results obtained are based on multilingual self-supervised pretraining, achieving a 45% recognition error rate reduction as compared to the classical approach – without the application of an external language model or additional supervised data. The results show the feasibility of using BEA-Base for training and evaluation of Hungarian speech recognition systems.