TITLE:
Semantic-Based Video Retrieval Survey
AUTHORS:
Shaimaa Toriah Mohamed Toriah, Atef Zaki Ghalwash, Aliaa A. A. Youssif
KEYWORDS:
Semantic Video Retrieval, Concept Detectors, Context Based Concept Fusion, Semantic Gap
JOURNAL NAME:
Journal of Computer and Communications,
Vol.6 No.8,
August
6,
2018
ABSTRACT: There is a tremendous growth of digital data due to the stunning progress of digital devices which facilitates capturing them. Digital data include image, text, and video. Video represents a rich source of information. Thus, there is an urgent need to retrieve, organize, and automate videos. Video retrieval is a vital process in multimedia applications such as video search engines, digital museums, and video-on-demand broadcasting. In this paper, the different approaches of video retrieval are outlined and briefly categorized. Moreover, the different methods that bridge the semantic gap in video retrieval are discussed in more details.