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http://dx.doi.org/10.14400/JDC.2021.19.5.197

A Study on the Application Model of AI Convergence Services Using CCTV Video for the Advancement of Retail Marketing  

Kim, Jong-Yul (Corporate Research Institute, MIR System. Co., ltd.)
Kim, Hyuk-Jung (Corporate Research Institute, MIR System. Co., ltd.)
Publication Information
Journal of Digital Convergence / v.19, no.5, 2021 , pp. 197-205 More about this Journal
Abstract
Recently, the retail industry has been increasingly demanding information technology convergence and utilization to respond to various external environmental threats such as COVID-19 and to be competitive using AI technologies, but there is a very lack of research and application services. This study is a CCTV video data-driven AI application case study, using CCTV image data collection in retail space, object detection and tracking AI model, time series database to store real-time tracked objects and tracking data, heatmap to analyze congestion and interest in retail space, social access zone.We present the orientation and verify its usability in the direction designed through practical implementation.
Keywords
Convergence; Retail; AI; Computer Vision; CCTV; Object Tracking;
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