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PiPS: Planning in perception space

机译:PiPS:在感知空间中进行规划

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摘要

Path planning for mobile robots requires rapidly finding collision-free trajectories in an uncertain and changing environment. Full collision checking with detailed, online-revised representations of the robot and world imposes a delay that undermines reactive obstacle avoidance. As a result, reactive vision-based approaches make various assumptions to arrive at simplified representations, such as circular or spherical robot shapes reducible to point masses, or obstacles that always rise from the ground. We seek to avoid these problems by modeling the robot directly in perception space so that collisionfree trajectories can be sought in a consistent representation with minimal processing needs. Here perception space refers to the depth space image measurements available by modern consumer range sensors. We hallucinate a robot navigating through the world and synthesize depth images of its path for comparison against the directly sensed depth images of the local world. The approach performs collision checking in a 3D volume but only requires 2D image comparisons. Experiments show that an implementation is able to negotiate an obstacle course consisting of miscellaneous objects in real-time.
机译:移动机器人的路径规划要求在不确定和多变的环境中迅速找到无碰撞的轨迹。全面的碰撞检查带有详细的,在线修订的机器人和世界的表示,会造成延迟,从而削弱了避免反应性避障的能力。因此,基于反应式视觉的方法会做出各种假设,以简化表示形式,例如可简化为点状质量的圆形或球形机器人形状,或者总是从地面升起的障碍物。我们试图通过在感知空间中直接对机器人进行建模来避免这些问题,以便可以以最少的处理需求以一致的表示形式寻找无碰撞的轨迹。这里的感知空间是指现代消费者距离传感器可用的深度空间图像测量。我们为机器人在世界中的幻觉作了幻觉,并合成了其路径的深度图像,以便与直接感应到的本地世界的深度图像进行比较。该方法在3D体积中执行碰撞检查,但仅需要2D图像比较。实验表明,该实现能够实时协商由杂物组成的障碍物路线。

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