Les Inscriptions à la Bibliothèque sont ouvertes en
ligne via le site: https://biblio.enp.edu.dz
Les Réinscriptions se font à :
• La Bibliothèque Annexe pour les étudiants en
2ème Année CPST
• La Bibliothèque Centrale pour les étudiants en Spécialités
A partir de cette page vous pouvez :
Retourner au premier écran avec les recherches... |
Détail de l'auteur
Auteur Andrew Perkis
Documents disponibles écrits par cet auteur
Affiner la rechercheA semantic framework for video genre classification and event analysis / Junyong You in Signal processing. Image communication, Vol. 25 N° 4 (Avril 2010)
[article]
in Signal processing. Image communication > Vol. 25 N° 4 (Avril 2010) . - pp. 287–302
Titre : A semantic framework for video genre classification and event analysis Type de document : texte imprimé Auteurs : Junyong You, Auteur ; Guizhong Liu, Auteur ; Andrew Perkis, Auteur Année de publication : 2012 Article en page(s) : pp. 287–302 Note générale : Electronique Langues : Anglais (eng) Mots-clés : Semantic video analysis Probabilistic model Video genre classification Event analysis Résumé : Semantic video analysis is a key issue in digital video applications, including video retrieval, annotation, and management. Most existing work on semantic video analysis is mainly focused on event detection for specific video genres, while the genre classification is treated as another independent issue. In this paper, we present a semantic framework for weakly supervised video genre classification and event analysis jointly by using probabilistic models for MPEG video streams. Several computable semantic features that can accurately reflect the event attributes are derived. Based on an intensive analysis on the connection between video genres and the contextual relationship among events, as well as the statistical characteristics of dominant event, a hidden Markov model (HMM) and naive Bayesian classifier (NBC) based analysis algorithm is proposed for video genre classification. Another Gaussian mixture model (GMM) is built to detect the contained events using the same semantic features, whilst an event adjustment strategy is proposed according to an analysis on the GMM structure and pre-definition of video events. Subsequently, a special event is recognized based on the detected events by another HMM. The simulative experiments on video genre classification and event analysis using a large number of video data sets demonstrate the promising performance of the proposed framework for semantic video analysis. ISSN : 0923-5965 En ligne : http://www.sciencedirect.com/science/article/pii/S0923596510000172 [article] A semantic framework for video genre classification and event analysis [texte imprimé] / Junyong You, Auteur ; Guizhong Liu, Auteur ; Andrew Perkis, Auteur . - 2012 . - pp. 287–302.
Electronique
Langues : Anglais (eng)
in Signal processing. Image communication > Vol. 25 N° 4 (Avril 2010) . - pp. 287–302
Mots-clés : Semantic video analysis Probabilistic model Video genre classification Event analysis Résumé : Semantic video analysis is a key issue in digital video applications, including video retrieval, annotation, and management. Most existing work on semantic video analysis is mainly focused on event detection for specific video genres, while the genre classification is treated as another independent issue. In this paper, we present a semantic framework for weakly supervised video genre classification and event analysis jointly by using probabilistic models for MPEG video streams. Several computable semantic features that can accurately reflect the event attributes are derived. Based on an intensive analysis on the connection between video genres and the contextual relationship among events, as well as the statistical characteristics of dominant event, a hidden Markov model (HMM) and naive Bayesian classifier (NBC) based analysis algorithm is proposed for video genre classification. Another Gaussian mixture model (GMM) is built to detect the contained events using the same semantic features, whilst an event adjustment strategy is proposed according to an analysis on the GMM structure and pre-definition of video events. Subsequently, a special event is recognized based on the detected events by another HMM. The simulative experiments on video genre classification and event analysis using a large number of video data sets demonstrate the promising performance of the proposed framework for semantic video analysis. ISSN : 0923-5965 En ligne : http://www.sciencedirect.com/science/article/pii/S0923596510000172