Video Big Data Retrieval over Media Cloud : A Context-Aware Online Learning Approach

Research output: Journal Publications and Reviews (RGC: 21, 22, 62)21_Publication in refereed journalpeer-review

19 Scopus Citations
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Author(s)

Detail(s)

Original languageEnglish
Article number8573816
Pages (from-to)1762-1777
Journal / PublicationIEEE Transactions on Multimedia
Volume21
Issue number7
Online published12 Dec 2018
Publication statusPublished - Jul 2019
Externally publishedYes

Abstract

Online video sharing (e.g., via YouTube or YouKu) has emerged as one of the most important services in the current Internet, where billions of videos on the cloud are awaiting exploration. Hence, a personalized video retrieval system is needed to help users find interesting videos from big data content. Two of the main challenges are to process the increasing amount of video big data and resolve the accompanying 'cold start' issue efficiently. Another challenge is to satisfy the users' need for personalized retrieval results, of which the accuracy is unknown. In this paper, we formulate the personalized video big data retrieval problem as an interaction between the user and the system via a stochastic process, not just a similarity matching, accuracy (feedback) model of the retrieval; introduce users' real-time context into the retrieval system; and propose a general framework for this problem. By using a novel contextual multiarmed bandit-based algorithm to balance the accuracy and efficiency, we propose a context-based online big-data-oriented personalized video retrieval system. This system can support datasets that are dynamically increasing in size and has the property of cross-modal retrieval. Our approach provides accurate retrieval results with sublinear regret and linear storage complexity and significantly improves the learning speed. Furthermore, by learning for a cluster of similar contexts simultaneously, we can realize sublinear storage complexity with the same regret but slightly poorer performance on the 'cold start' issue compared to the previous approach. We validate our theoretical results experimentally on a tremendously large dataset; the results demonstrate that the proposed algorithms outperform existing bandit-based online learning methods in terms of accuracy and efficiency and the adaptation from the bandit framework offers additional benefits.

Research Area(s)

  • Big data, contextual bandit, media cloud, online learning, video retrieval

Citation Format(s)

Video Big Data Retrieval over Media Cloud : A Context-Aware Online Learning Approach. / Feng, Yinan; Zhou, Pan; Xu, Jie; Ji, Shouling; Wu, Dapeng.

In: IEEE Transactions on Multimedia, Vol. 21, No. 7, 8573816, 07.2019, p. 1762-1777.

Research output: Journal Publications and Reviews (RGC: 21, 22, 62)21_Publication in refereed journalpeer-review