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Increasing underwater manipulation autonomy using segmentation and visual tracking

机译:使用分割和视觉跟踪增加水下操纵自主权

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The present research in underwater robotics aims to increase the autonomy of manipulation operations in fields such as archaeology or biology, that cannot afford costly underwater interventions using traditional Remote Operated Vehicles (ROV). This paper describes a work towards the long term goal of autonomous underwater manipulation. Autonomous grasping, with limited sensors and water conditions which affect the robot systems, is a growing skill in underwater scenarios. Here we present a framework that uses vision, segmentation, user interfaces and grasp planning to perform visually guided manipulation to improve the specification of grasping operations. With it, a user commands and supervises the robot to recover cylinder shaped objects, a very common restriction in archaeological scenarios. This framework, though, can be expanded to detect other kind of objects. Information of the environment is gathered with stereo cameras and laser reconstruction methods to obtain a model of the object's graspable area. A RANSAC segmentation algorithm is used to estimate the model parameters and the best grasp is presented to the user in an intuitive user interface. The grasp is then executed by the robot. This approach has been tested in simulation and in water tank conditions.
机译:水下机器人的目前研究旨在提高经过考古或生物学等领域的操纵行动的自主权,这不能使用传统的远程操作车辆(ROV)承担昂贵的水下干预措施。本文介绍了对自主水下操纵的长期目标的工作。自主抓握,影响机器人系统的有限传感器和水条件,是水下情景的越来越高的技能。在这里,我们介绍了一个使用视觉,分割,用户界面和掌握计划来执行视觉引导操作的框架,以改善掌握操作的规范。使用它,用户命令并监督机器人以恢复汽缸形物体,这是考古场景中非常常见的限制。但是,此框架可以扩展以检测其他类型的对象。环境信息与立体声相机和激光重建方法聚集,以获得物体抓住区域的模型。 RANSAC分段算法用于估计模型参数,并且在直观的用户界面中向用户呈现最佳掌握。然后由机器人执行掌握。这种方法已经在仿真和水箱条件下进行了测试。

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