Content-based multimedia analytics: US and NATO research
Abstract
The US and nations of the NATO Alliance are increasingly threatened by the global spread of terrorism, humanitarian
crises/disaster response, and public health emergencies. These threats are influenced by the unprecedented rise of
information sharing technologies and practices, where mobile access to social networking sites is ubiquitous. In this new
information environment, agile data algorithms, machine learning software, and threat alert mechanisms must be developed
to automatically create alerts and drive quick response. US science and technology investments in Artificial Intelligence
and Machine Learning (AI/ML) and Human Agent Teaming (HAT) are increasingly focused on developing capabilities
toward that end. A critical foundation of these technologies is the awareness of the underlying context to accurately
interpret machine-processed warnings and recommendations. In this sense, context can be a dynamic characteristic of the
operating environment and demands a multi-analytic approach. In this paper, we describe US doctrine that formulates
capability requirements for operations in the information environment. We then describe a promising social computing
approach that brings together information retrieval strategies using multimedia sources that include text, video, and
imagery. Social computing is used in this case to increase awareness of societal dynamics at various scales that influence
and impact military operations in both the physical and information domains. Our focus, content based information
retrieval and multimedia analytics, involves the exploitation of multiple data sources to deliver timely and accurate
synopses of data that can be combined with human intuition and understanding to develop a comprehensive worldview.
Description
Bowman, Elizabeth K; Burghouts, Gertjan; Øverlier, Lasse; Kase, Sue E; Zimmerman, Randal J; Oggero, Serena.
Content-based multimedia analytics: US and NATO research. Proceedings of SPIE, the International Society for Optical Engineering 2018 ;Volum 10653.