Migration-Related Semantic Concepts for the Retrieval of Relevant Video
Content
- URL: http://arxiv.org/abs/2011.06829v1
- Date: Fri, 13 Nov 2020 09:37:10 GMT
- Title: Migration-Related Semantic Concepts for the Retrieval of Relevant Video
Content
- Authors: Elejalde Erick and Galanopoulos Damianos and Niederee Claudia and
Mezaris Vasileios
- Abstract summary: Migration-related situations and decisions are influenced by various factors.
An improved understanding of such factors can be achieved by systematic automated analyses of media and social media channels.
We propose a novel approach that effectively bridges the gap between a substantiated domain understanding and the expression of migration-related semantic concepts.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Migration, and especially irregular migration, is a critical issue for border
agencies and society in general. Migration-related situations and decisions are
influenced by various factors, including the perceptions about migration routes
and target countries. An improved understanding of such factors can be achieved
by systematic automated analyses of media and social media channels, and the
videos and images published in them. However, the multifaceted nature of
migration and the variety of ways migration-related aspects are expressed in
images and videos make the finding and automated analysis of migration-related
multimedia content a challenging task. We propose a novel approach that
effectively bridges the gap between a substantiated domain understanding -
encapsulated into a set of Migration-related semantic concepts - and the
expression of such concepts in a video, by introducing an advanced video
analysis and retrieval method for this purpose.
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