蜜臀av性久久久久|国产免费久久精品99|国产99久久久久久免费|成人精品一区二区三区在线|日韩精品一区二区av在线|国产亚洲欧美在线观看四区|色噜噜综合亚洲av中文无码|99久久久国产精品免费播放器

<cite id="ygcks"><center id="ygcks"></center></cite>
  • 
    
  • <rt id="ygcks"></rt>
    <cite id="ygcks"></cite>
  • <li id="ygcks"><source id="ygcks"></source></li> <button id="ygcks"></button>
  • <button id="ygcks"></button>
    <button id="ygcks"><input id="ygcks"></input></button>
    
    
    <abbr id="ygcks"><source id="ygcks"></source></abbr>
    
    
    
     
    
    

    Researchers develop AI-based control system for underwater robots

    Source: Xinhua| 2020-04-02 14:37:47|Editor: huaxia

    SHENYANG, April 2 (Xinhua) -- Researchers from China and the UK have developed a novel deep learning method for autonomous mobile manipulators in unstructured environments, which could facilitate the autonomous operation of underwater robots.

    Compared with traditional industrial robots in manufacturing, it is more challenging for an autonomous robot to work safely in dynamic and unstructured environments, such as vast space, open land and the deep sea. Robot autonomy in uncontrolled scenarios requires significantly extra capabilities, including perception, navigation, decision-making and manipulation.

    Researchers from the Shenyang Institute of Automation under the Chinese Academy of Sciences and the Edinburgh Centre for Robotics in the UK have constructed a novel deep-learning-based control system to achieve autonomous mobile manipulation in dynamic and unstructured environments.

    The system uses a deep learning method to perceive and understand the environment and targets through an on-board camera. Then, it uses the acquired information and the robot state to autonomously control the robot.

    Extensive simulation and experiment results show that the proposed mobile manipulation system can grasp different types of objects autonomously in various simulations and real-world scenarios.

    The research lays a foundation for the autonomous operation of complex underwater robot systems, according to the team.

    The research was published in the journal Sensors.

    KEY WORDS:
    EXPLORE XINHUANET
    010020070750000000000000011100001389409331
    大洼县| 华蓥市| 饶河县| 隆安县| 耿马| 滨海县| 柯坪县| 承德市| 峨山| 天祝| 东乡| 建始县| 湟源县| 彰化市| 平塘县| 佛冈县| 锦州市| 香河县| 西华县| 彭阳县| 永修县| 梧州市| 红河县| 蚌埠市| 克东县| 洛隆县| 平利县| 沙雅县| 富源县| 辰溪县| 阳江市| 温州市| 保德县| 太谷县| 娄烦县| 廉江市| 乐东| 确山县| 尚义县| 景宁| 迁安市|