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Measuring Pedestrian Traffic Using Feature-Based Regression in the Spatiotemporal Domain 원문보기

International Journal of Control, Automation and Systems, v.10 no.2, 2012년, pp.328 - 340  

Lee, Gwang-Gook (Intelligent Video Tech. Lab of Emerging Technology R&D Center, SK telecom) ,  Kim, Whoi-Yul (Department of Electronic Engineering, Hanyang University)

Abstract AI-Helper 아이콘AI-Helper

Measuring pedestrian traffic in public areas is important for diverse business, security, and building management applications. Even though various computer vision methods have been proposed for this purpose, they are not suitable for measuring high traffic levels in large public areas. Because prev...

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참고문헌 (27)

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