Multilingual Multimodal Detection of Humour in Stand-Up Comedy
Vícejazyčná, multimodální detekce humoru ve stand-up komedii
diploma thesis (DEFENDED)
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http://hdl.handle.net/20.500.11956/184193Identifiers
Study Information System: 257821
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- Kvalifikační práce [11242]
Author
Advisor
Referee
Krubiński, Mateusz
Faculty / Institute
Faculty of Mathematics and Physics
Discipline
Computer Science - Language Technologies and Computational Linguistics
Department
Institute of Formal and Applied Linguistics
Date of defense
6. 9. 2023
Publisher
Univerzita Karlova, Matematicko-fyzikální fakultaLanguage
English
Grade
Excellent
Keywords (Czech)
humor|automatická detekce|stand-up comedie|vícejazyčný|multimodálníKeywords (English)
humour|automatic detection|stand-up comedy|multilingual|multimodalThis thesis focuses on the multimodal and multilingual detection of humor in stand- up comedy videos. A novel multilingual dataset was collected, primarily targeting the Russian language, to address the lack of specific multimodal datasets for humor detection in this language. The dataset was obtained from stand-up comedy videos with subtitles sourced from YouTube. The thesis investigates various aspects of the data preparation process, including word-level forced alignment, segmentation, and labeling with laughter detection. Two automatic laughter detection approaches are explored: the peak detection approach, which employs preprocessed voiceless audio and an energy-based peak detec- tion algorithm with clusterization filtering, and the machine learning approach, which utilizes a pretrained model to detect laughter presence and duration. Results indicate that for now the machine learning approach outperforms the peak detection approach in terms of accuracy and generalization, however the peak detection approach is considered promising. Additionally, thesis delves into the unimodal textual and multimodal humor detection on the new dataset. The results demonstrate the ability of neural models to capture humour in both languages even in the textual only setting. While multimodal experiments showed that even...