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| Palabras clave |  | 
| Resumen | Serious games are receiving increasing attention in the field of cultural heritage (CH) applications. A special field of CH and education is intangible cultural heritage and particularly dance. Machine learning (ML) tools are necessary elements for the success of a serious game platform since they introduce intelligence in processing and analysis of users interactivity. ML provides intelligent scoring and monitoring capabilities of the user s progress in a serious game platform. In this article, we introduce a deep learning model for motion primitive classification. The model combines a convolutional processing layer with a bidirectional analysis module. This way, RGB information is efficiently handled by the hierarchies of convolutions, while the bidirectional properties of a long short term memory (LSTM) model are retained. The resulting convolutionally enhanced bidirectional LSTM (CEBi-LSTM) architecture is less sensitive to skeleton errors, occurring using low-cost sensors, such as Kinect, while simultaneously handling the high amount of detail when using RGB visual information. | 
| Volumen | 40 | 
| Número | 4 | 
| Número de páginas | 26-38 | 
| Publisher: IEEE Computer Society | |
| Numero ISSN | 02721716 (ISSN) | 
| URL | |
| DOI | 10.1109/MCG.2020.2985035 | 
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