In this paper we present our methods for the MediaEval 2019 Multimedia Satellite Task, which is aiming to extract complementary information associated with adverse events from Social Media and satellites. For the first challenge, we propose a framework jointly utilizing colour, object and scene-level information to predict whether the topic of an article containing an image is a flood event or not. Visual features are combined using early and late fusion techniques achieving an average F1-score of 82.63, 82.40, 81.40 and 76.77. For the multi-modal flood level estimation, we rely on both visual and textual information achieving an average F1-score of 58.48 and 46.03, respectively. Finally, for the flooding detection in time-based satellite image sequences we used a combination of classical computer-vision and machine learning approaches achieving an average F1-score of 58.82.

Multi-modal machine learning for flood detection in news, social media and satellite sequences / Ahmad, K.; Pogorelov, K.; Ullah, M.; Riegler, M.; Conci, N.; Langguth, J.; Al-Fuqaha, A.. - 2670:(2019). (Intervento presentato al convegno 2019 Working Notes of the MediaEval Workshop, MediaEval 2019 tenutosi a fra nel 2019).

Multi-modal machine learning for flood detection in news, social media and satellite sequences

Ahmad K.;Conci N.;
2019-01-01

Abstract

In this paper we present our methods for the MediaEval 2019 Multimedia Satellite Task, which is aiming to extract complementary information associated with adverse events from Social Media and satellites. For the first challenge, we propose a framework jointly utilizing colour, object and scene-level information to predict whether the topic of an article containing an image is a flood event or not. Visual features are combined using early and late fusion techniques achieving an average F1-score of 82.63, 82.40, 81.40 and 76.77. For the multi-modal flood level estimation, we rely on both visual and textual information achieving an average F1-score of 58.48 and 46.03, respectively. Finally, for the flooding detection in time-based satellite image sequences we used a combination of classical computer-vision and machine learning approaches achieving an average F1-score of 58.82.
2019
CEUR Workshop Proceedings
germany
CEUR-WS
Multi-modal machine learning for flood detection in news, social media and satellite sequences / Ahmad, K.; Pogorelov, K.; Ullah, M.; Riegler, M.; Conci, N.; Langguth, J.; Al-Fuqaha, A.. - 2670:(2019). (Intervento presentato al convegno 2019 Working Notes of the MediaEval Workshop, MediaEval 2019 tenutosi a fra nel 2019).
Ahmad, K.; Pogorelov, K.; Ullah, M.; Riegler, M.; Conci, N.; Langguth, J.; Al-Fuqaha, A.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/436862
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