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Recognition and path planning strategy for autonomous navigation in the elevator environment

机译:电梯环境下自主导航的识别与路径规划策略

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摘要

This paper presents a robust and reliable method for a mobile robot to get on/off an elevator in a multistory building. Getting on/off the elevator requires the robot to perform two different tasks: a recognition task and a navigation task. First, we propose a recognition algorithm for the elevator buttons and status so that the robot reacts flexibly to the current elevator status. We first apply an adaptive threshold to the current image in order to get a binary image. Then we extract the candidates of the buttons and the floor number after preliminary filtering. Ambiguous candidates are rejected using an artificial neural network, and a matching method is applied to finally recognize the call buttons, destination floor buttons, moving direction and current location of the elevator. Second, we suggest a path planning algorithm to navigate into and out of the elevator without any collision. By constructing an occupancy grid map and computing a target function, we find the best position for the robot to get on the elevator. Then we plan an optimal path to the best position using a potential field method. Experiments were carried out in several simulated and real environments including empty, crowd and blocked scenarios. The approach presented here has been found to allow the robot to navigate in the elevator without collisions.
机译:本文提出了一种健壮且可靠的方法,用于移动机器人上下多层建筑中的电梯。上下电梯需要机器人执行两个不同的任务:识别任务和导航任务。首先,我们提出了一种针对电梯按钮和状态的识别算法,以便机器人对当前电梯状态做出灵活的反应。我们首先将自适应阈值应用于当前图像以获得二进制图像。然后我们在初步过滤后提取按钮的候选者和楼层号。使用人工神经网络拒绝模棱两可的候选对象,并应用匹配方法最终识别呼叫按钮,目的地楼层按钮,电梯的移动方向和当前位置。其次,我们建议一种路径规划算法,以导航进出电梯而不会发生任何碰撞。通过构建占用栅格图并计算目标函数,我们找到了机器人上电梯的最佳位置。然后,我们使用势场方法规划到达最佳位置的最佳路径。实验是在几种模拟和真实环境中进行的,包括空旷的,拥挤的和封闭的场景。已经发现这里提出的方法允许机器人在电梯中导航而不会发生碰撞。

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