CVJan 13, 2015

Learning from Multiple Sources for Video Summarisation

arXiv:1501.03069v226 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of improving video summarization for surveillance applications by integrating heterogeneous data, though it is incremental in combining existing data types.

The paper tackles the problem of unreliable visual cues in public surveillance video summarization by jointly learning from visual and non-visual data sources, achieving better video content clustering and accurately inferring missing non-visual semantics.

Many visual surveillance tasks, e.g.video summarisation, is conventionally accomplished through analysing imagerybased features. Relying solely on visual cues for public surveillance video understanding is unreliable, since visual observations obtained from public space CCTV video data are often not sufficiently trustworthy and events of interest can be subtle. On the other hand, non-visual data sources such as weather reports and traffic sensory signals are readily accessible but are not explored jointly to complement visual data for video content analysis and summarisation. In this paper, we present a novel unsupervised framework to learn jointly from both visual and independently-drawn non-visual data sources for discovering meaningful latent structure of surveillance video data. In particular, we investigate ways to cope with discrepant dimension and representation whist associating these heterogeneous data sources, and derive effective mechanism to tolerate with missing and incomplete data from different sources. We show that the proposed multi-source learning framework not only achieves better video content clustering than state-of-the-art methods, but also is capable of accurately inferring missing non-visual semantics from previously unseen videos. In addition, a comprehensive user study is conducted to validate the quality of video summarisation generated using the proposed multi-source model.

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