Visual Semantic Multimedia Event Model for Complex Event Detection in Video Streams
Piyush Yadav, Edward Curry

TL;DR
This paper introduces a semantic knowledge model and pattern detection framework for complex event processing in multimedia streams, enabling high-level event detection and reasoning.
Contribution
It presents a novel knowledge graph and hierarchical event network for multimedia event detection, bridging semantic gaps with event calculus.
Findings
Validated with a traffic event ontology prototype
Enhanced pattern detection from multimedia streams
Improved semantic reasoning capabilities
Abstract
Multimedia data is highly expressive and has traditionally been very difficult for a machine to interpret. Middleware systems such as complex event processing (CEP) mine patterns from data streams and send notifications to users in a timely fashion. Presently, CEP systems have inherent limitations to process multimedia streams due to its data complexity and the lack of an underlying structured data model. In this work, we present a visual event specification method to enable complex multimedia event processing by creating a semantic knowledge representation derived from low-level media streams. The method enables the detection of high-level semantic concepts from the media streams using an ensemble of pattern detection capabilities. The semantic model is aligned with a multimedia CEP engine deep learning models to give flexibility to end-users to build rules using spatiotemporal event…
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Taxonomy
TopicsVideo Analysis and Summarization · Advanced Image and Video Retrieval Techniques · Data Management and Algorithms
