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Development of Moving Objects Recognition and Tracking System on 360 Degree Panorama

360도 영상에서 이동 물체 감지 및 추적 시스템의 개발

  • Ko, Kwang-Man (Department of Computer Engineering, SangJi University) ;
  • Joo, Su-Chong (Department of Computer and Software Engineering, WonKwang University)
  • Received : 2018.02.02
  • Accepted : 2018.02.21
  • Published : 2018.02.28

Abstract

The 360 degree panoramas are picture of a wide range of images on one screen, so we can see a fairly wide range at a time. In particular, cylinderical panoramas are the most widely used spherical image, and its left and right viewing angles reach 360 degree, so you can observe front, rear, left, and right at once. Using 360 degree panorama, all directions can be monitored at the same time, so all directions can be effectively monitored compared to other methods. In this paper, we develop a system to recognize and track the movement of moving objects on a 360 degree panorama, and then present and verify the experimental results. For this goals, first, we developed a system to recognize moving objects in 360 degree panorama using DoF(Difference of Frame) algorithm. Second, based on the TLD algorithm, we developed an application that can track a specific single moving object in a 360 degree panorama and presented the experimental results.

Keywords

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