location:Home > 2020 VOL.3 Feb No.1 > Design of visual moving target tracking system based on artificial intelligence

2020 VOL.3 Feb No.1

  • Title: Design of visual moving target tracking system based on artificial intelligence
  • Name: Stovas Azarov
  • Company: Avans Hogeschool
  • Abstract:

    The accuracy of traditional visual moving target tracking systems is poor. In order to solve this problem, this paper designs a new visual moving target tracking system based on artificial intelligence. The system hardware and software were designed. The hardware mainly designed the DSP core processor, video processing channel frame memory, start-up system, and integrated dome control camera, and gave the software tracking calculation process. Compared with the traditional system, the experimental results show that the designed system can accurately track moving targets, with high work efficiency and low cost.

  • Keyword: Artificial Intelligence; Visual Movement; Target Tracking; Tracking System;
  • DOI: 10.12250/jpciams2020010122
  • Citation form: Stovas Azarov.Design of visual moving target tracking system based on artificial intelligence[J]. Computer Informatization and Mechanical System, 2020, vol. 3, pp. 89-94.
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Tsuruta Institute of Medical Information Technology
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