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ORCID: https://orcid.org/0009-0007-2298-4417, Llorente Gómez, Álvaro
ORCID: https://orcid.org/0000-0001-8737-2402, Río Ponce, Alberto del
ORCID: https://orcid.org/0000-0002-6832-4381, Serrano Romero, Javier
ORCID: https://orcid.org/0000-0003-2111-187X and Jiménez Bermejo, David
ORCID: https://orcid.org/0000-0002-7382-4276
(2024).
Performance evaluation of YOLOv8-based bib number detection in media streaming race.
"IEEE Transactions on Broadcasting", v. 70
(n. 3);
pp. 1126-1138.
ISSN 0018-9316.
https://doi.org/0.1109/TBC.2024.3414656.
| Título: | Performance evaluation of YOLOv8-based bib number detection in media streaming race |
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| Autor/es: |
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| Tipo de Documento: | Artículo |
| Título de Revista/Publicación: | IEEE Transactions on Broadcasting |
| Fecha: | 1 Septiembre 2024 |
| ISSN: | 0018-9316 |
| Volumen: | 70 |
| Número: | 3 |
| Materias: | |
| ODS: | |
| Palabras Clave Informales: | YOLO, object detection, bib number detection, cognitive networks, media streaming, broadcasting, edge computing, runner segmentation, image quality |
| Escuela: | E.T.S.I. Telecomunicación (UPM) |
| Departamento: | Sistemas Informáticos |
| Licencias Creative Commons: | Reconocimiento |
|
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The evolution of telecommunication networks unlocks new possibilities for multimedia services, including enriched and personalized experiences. However, ensuring high Quality of Service and Quality of Experience requires intelligent solutions at the edge. This study investigates the real-time detection of race bib numbers using YOLOv8, a state-of-the-art object detection framework, within the context of 5G/6G edge computing. We train (BDBD and SVHN datasets) and analyze various YOLOv8 models (nano to extreme) across two diverse racing datasets (TGCRBNW and RBNR), encompassing varied environmental conditions (daytime and nighttime). Our assessment focuses on key performance metrics, including processing time, efficiency, and accuracy. For instance, on the TGCRBNW dataset, the extreme-sized model shows a noticeable reduction in prediction time when the more powerful GPU is used, with times decreasing from 1,161 to 54 seconds on a desktop computer. Similarly, on the RBNR dataset, the extreme-sized model exhibits a significant reduction in prediction time from 373 to 15 seconds when using the more powerful GPU. In terms of accuracy, we found varying performance across scenarios and datasets. For example, not good enough results are obtained in most scenarios on the TGCRBNW dataset (lower than 50% in all sets and models), while YOLOv8m obtain the high accuracy in several scenarios on the RBNR dataset (almost 80% of accuracy in the best set). Variability in prediction times was observed between different computer architectures, highlighting the importance of selecting appropriate hardware for specific tasks. These results emphasize the importance of aligning computational resources with the demands of real-world tasks to achieve timely and accurate predictions.
| ID de Registro: | 87873 |
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| Identificador DC: | https://oa.upm.es/87873/ |
| Identificador OAI: | oai:oa.upm.es:87873 |
| URL Portal Científico: | https://portalcientifico.upm.es/es/ipublic/item/10239751 |
| Identificador DOI: | 0.1109/TBC.2024.3414656 |
| URL Oficial: | https://ieeexplore.ieee.org/document/10591494 |
| Depositado por: | iMarina Portal Científico |
| Depositado el: | 17 Feb 2025 11:21 |
| Ultima Modificación: | 17 Feb 2025 11:34 |
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