Minghsin University Institutional Repository:Item 987654321/1630
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    jsp.display-item.identifier=請使用永久網址來引用或連結此文件: http://120.105.36.38/ir/handle/987654321/1630


    题名: 運用光達技術於為駛輔助系統之趼究
    作者: 黃燕萍
    贡献者: 企業管理系
    关键词: Key words: LiDAR 、Deep Learning 丶Autonomous Vehicle 丶和g Data, D呾ta! 、 Twins
    日期: 2023-10-31
    上传时间: 2023-11-27 14:47:07 (UTC+8)
    摘要: The development of autonomous vehicles tee恤ology will have a gmne-chm1ging
    impact on lots of business industries, ur區mm1agement and our daily life in the near
    future. Nowadays 由ere are lots of new passenger cars made by major car
    mm1ufacturers sold in tl1e market is equipped with Advanced Driver Assistm1ce
    System (ADAS) as standard or option. Current ADAS systen1 are include with lots of
    active safety features such as Autonomous Emergency Bralcing (AEB), Blind Spot
    Monitoring (BSM), Adaptive Cruise Control (ACC), Lane Keeping Assist (LKA) etc.
    These features are designed to not only reduce driving pressure and also reduce the
    chm1ce of getting car accident. Therefore, the research is to achieve Level 2 Hm1ds
    free autonomous driving system. To achieve this goal, we need to improve ilie current
    ADAS with the help of LiDAR range finding sensor, computer vision m1d deep
    learning. Not only that, the 唧lication of 山gital twins also cm1 help us to e1血nced
    the algoritlnn of the self-driving system such as data training of object detection and
    recognition using computer vision to increase the efficiency of development.
    显示于类别:[企業管理系] 校內專題研究計畫

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