Toward Optimized Multimodal Concept Indexing

Authors: 
Navid Rekabsaz
Ralf Bierig
Mihai Lupu
Allan Hanbury
Type: 
Speech with proceedings
Proceedings: 
Semantic Keyword-based Search on Structured Data Sources
Publisher: 
Springer
Pages: 
141 - 152
ISBN: 
ISBN: 978-3-319-27932-9
Year: 
2015
Abstract: 
Information retrieval on the (social) web moves from a pure term-frequency-based approach to an enhanced method that includes conceptual multimodal features on a semantic level. In this paper, we present an approach for semantic-based keyword search and focus especially on its optimization to scale it to real-world sized collections in the social media domain. Furthermore, we present a faceted indexing framework and architecture that relates content to semantic concepts to be indexed and searched semantically. We study the use of textual concepts in a social media domain and observe a significant improvement from using a concept-based solution for keyword searching. We address the problem of time-complexity that is critical issue for concept-based methods by focusing on optimization to enable larger and more real-world style applications.
TU Focus: 
Information and Communication Technology
Reference: 

N. Rekabsaz, R. Bierig, M. Lupu, A. Hanbury:
"Toward Optimized Multimodal Concept Indexing";
Vortrag: International KEYSTONE Conference (IKC), Coimbra Portugal; 08.09.2015 - 09.09.2015; in: "Semantic Keyword-based Search on Structured Data Sources", Springer, 9398 (2015), ISBN: 978-3-319-27932-9; S. 141 - 152.

Zusätzliche Informationen

Last changed: 
08.12.2016 23:00:28
TU Id: 
253783
Accepted: 
Accepted
Invited: 
Department Focus: 
Business Informatics
Abstract German: 
Author List: 
N. Rekabsaz, R. Bierig, M. Lupu, A. Hanbury