Antoine Laurent
2020
A Multimodal Educational Corpus of Oral Courses: Annotation, Analysis and Case Study
salima mdhaffar
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Yannick Estève
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Antoine Laurent
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Nicolas Hernandez
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Richard Dufour
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Delphine Charlet
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Geraldine Damnati
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Solen Quiniou
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Nathalie Camelin
Proceedings of The 12th Language Resources and Evaluation Conference
This corpus is part of the PASTEL (Performing Automated Speech Transcription for Enhancing Learning) project aiming to explore the potential of synchronous speech transcription and application in specific teaching situations. It includes 10 hours of different lectures, manually transcribed and segmented. The main interest of this corpus lies in its multimodal aspect: in addition to speech, the courses were filmed and the written presentation supports (slides) are made available. The dataset may then serve researches in multiple fields, from speech and language to image and video processing. The dataset will be freely available to the research community. In this paper, we first describe in details the annotation protocol, including a detailed analysis of the manually labeled data. Then, we propose some possible use cases of the corpus with baseline results. The use cases concern scientific fields from both speech and text processing, with language model adaptation, thematic segmentation and transcription to slide alignment.
Where are we in Named Entity Recognition from Speech?
Antoine Caubrière
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Sophie Rosset
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Yannick Estève
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Antoine Laurent
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Emmanuel Morin
Proceedings of The 12th Language Resources and Evaluation Conference
Named entity recognition (NER) from speech is usually made through a pipeline process that consists in (i) processing audio using an automatic speech recognition system (ASR) and (ii) applying a NER to the ASR outputs. The latest data available for named entity extraction from speech in French were produced during the ETAPE evaluation campaign in 2012. Since the publication of ETAPE’s campaign results, major improvements were done on NER and ASR systems, especially with the development of neural approaches for both of these components. In addition, recent studies have shown the capability of End-to-End (E2E) approach for NER / SLU tasks. In this paper, we propose a study of the improvements made in speech recognition and named entity recognition for pipeline approaches. For this type of systems, we propose an original 3-pass approach. We also explore the capability of an E2E system to do structured NER. Finally, we compare the performances of ETAPE’s systems (state-of-the-art systems in 2012) with the performances obtained using current technologies. The results show the interest of the E2E approach, which however remains below an updated pipeline approach.
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Co-authors
- Yannick Estève 2
- salima mdhaffar 1
- Nicolas Hernandez 1
- Richard Dufour 1
- Delphine Charlet 1
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Venues
- LREC2