Content-based image retrieval systems require the development of relevance feedback mechanisms that allow the user to progressively refine the system's response to a query. In this paper a new relevance feedback mechanism is described which evaluates the feature distributions of the images judged relevant, or not relevant, by the user and dynamically updates both the similarity measure and the query in order to accurately represent the user's particular information needs. Experimental results demonstrate the effectiveness of this mechanism.
Ciocca, G., Schettini, R. (1999). Relevance feedback mechanism for content-based image retrieval. INFORMATION PROCESSING & MANAGEMENT, 35(5), 605-632 [10.1016/S0306-4573(99)00021-7].
Relevance feedback mechanism for content-based image retrieval
CIOCCA, GIANLUIGI
;SCHETTINI, RAIMONDOUltimo
1999
Abstract
Content-based image retrieval systems require the development of relevance feedback mechanisms that allow the user to progressively refine the system's response to a query. In this paper a new relevance feedback mechanism is described which evaluates the feature distributions of the images judged relevant, or not relevant, by the user and dynamically updates both the similarity measure and the query in order to accurately represent the user's particular information needs. Experimental results demonstrate the effectiveness of this mechanism.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.