Virtual Simulation based Visual Object Tracking via Deep Reinforcement Learning

Khurshedjon Farkhodov, Jin-Hyeok Park, Suk-Hwan Lee, Ki-Ryong Kwon
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Abstract

The current research field of object tracking has become noticeably popular among researchers where AI techniques take place with high-level accuracy. An algorithm with multifunctional abilities had proposed in different proposals in recent years. We proposed a tracking technique integrated with a virtual reality simulator – the AirSim (Areal Informatics and Robotics Simulation) City Environ model using one of the DRL models to control with a drone agent to examine a realistic environment. Additionally, the suggested method had tested via the two public: VisDrone2019 and OTB-100 datasets to compare with conventional strategies to show better performance among recent works.
基于深度强化学习的视觉目标跟踪虚拟仿真
目前的目标跟踪研究领域在研究人员中变得非常受欢迎,人工智能技术以高精确度进行。近年来,在不同的方案中提出了一种具有多功能能力的算法。我们提出了一种与虚拟现实模拟器集成的跟踪技术- AirSim(区域信息学和机器人仿真)城市环境模型,使用其中一个DRL模型来控制无人机代理以检查现实环境。此外,建议的方法通过两个公共数据集进行了测试:VisDrone2019和OTB-100,以与传统策略进行比较,在最近的作品中显示出更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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