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虚拟现实技术研究进展 被引量:111

A brief survey on virtual reality technology
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摘要 分析了虚拟现实VR的发展过程、基本特点和主要应用,从VR设备、VR内容、VR交互3个方面概述了VR当前的主要研究目标和研究成果,探讨了VR进一步研究的技术方向。 This survey provides a eomprehensive aualysis of the development history, key eharaeteristies and major applieations of VR. From the perspeetives like VR deviees, VR eontent and VR interaction, we briefly describe the main objectives and produets of the state- of-the-art VR researches. Finally, weproposeseveral directions that need to be further exploredin the future.
出处 《科技导报》 CAS CSCD 北大核心 2016年第14期71-75,共5页 Science & Technology Review
基金 国家自然科学基金项目(61325011 61502023 61532003) 高等学校博士学科点专项科研基金项目(20131102130002)
关键词 虚拟现实 VR硬件 VR内容 VR交互 virtual reality VR hardware VR content VR interaction
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参考文献17

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