Abstract Autonomous SLAM based humanoid navigation in a cluttered environment while transporting a heavy load
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Autonomous SLAM based humanoid navigation in a cluttered environment while transporting a heavy load

机译:在运输重载的同时,基于自动血液的人形导航在杂乱的环境中

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AbstractAlthough in recent years there have been quite a few studies aimed at the navigation of robots in cluttered environments, few of these have addressed the problem of robots navigating while moving a large or heavy objects. This is especially useful when transporting loads with variable weights and shapes without having to change the robot hardware. Inspired by the wide use of makeshift carts by humans, we tackle, in this work, the problem of a humanoid robot navigating in a cluttered environment while displacing a heavy load that lies on a cart-like object. We present a complete navigation scheme, from the incremental construction of a map of the environment and the computation of collision-free trajectories to the control to execute these trajectories. Our contributions are as follows: (1) a whole-body control scheme that makes the humanoid use its hands and arms to control the motions of the cart–load system (e.g. tight turns) (2) a sensorless approach to automatically select the appropriate primitive set according to the load weight (3) a motion planning algorithm to find an obstacle-free trajectory using the appropriate primitive set and the constructed map of the environment as input (4) an efficient filtering technique to remove the cart from the field of view of the robot while improving the general performances of the SLAM algorithms and (5) a continuous and consistent odometry data formed by fusing the visual and the robot odometry information. We present experiments conducted on a real Nao robot, equipped with an RGB-D sensor mounted on its head, pushing a cart with different loads. Our experiments show that the payload can be significantly increased without changing the robot’s main hardware, and therefore enacting the capacity of humanoid robots in real-life situations.Highlights?Whole-body control scheme for a humanoid pushing a cart–load system is proposed.?Sensorless approach to automatically select the appropriate primitive set.?Motion planning algorithm to find an obstacle-free trajectory.?Efficient filtering technique to remove the cart from the robot’s field of view.]]>
机译:<![cdata [ Abstract 虽然近年来,镜上有很多研究旨在在杂乱的环境中导航机器人的导航,但其中很少有人解决了机器人的问题移动大型或重物的同时导航。当使用可变权重和形状传输负载时,这尤其有用,而无需更改机器人硬件。通过人类的广泛使用临时推车,我们在这项工作中解决了人形机器人在杂乱环境中导航的问题,同时置换了位于卡车样物体上的重载。我们提出了一个完整的导航方案,从环境地图的增量构建以及对控制的无碰撞轨迹的计算来执行这些轨迹。我们的贡献如下:(1)一种全身控制方案,使人形使人形使用它的手和手臂来控制车载装载系统的动作(例如,紧身匝数)(2)无传感器方法,可以自动选择合适的原始设置根据负载权重(3)运动规划算法使用适当的原始集和环境的构造地图找到无障碍轨迹,作为输入(4)一种高效的过滤技术,以从场上移除推车机器人的视图,同时提高了SLAM算法的一般性能,(5)通过熔断视觉和机器人测量信息而形成的连续和一致的内径图数据。我们目前在真正的Nao机器人上进行的实验,配备有安装在其头部的RGB-D传感器,推动带有不同负载的推车。我们的实验表明,在不改变机器人的主要硬件的情况下,有效载荷可以显着提高,因此在现实生活中颁布人形机器人的能力。 突出显示 推动购物车系统的人形驱动系统的全身控制方案。 自动选择合适的原始集合的无传感器方法。< / ce:para> 运动planni ng算法找到无障碍轨迹。 从机器人的视野中卸下购物车的高效过滤技术。 ]]>

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