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CNN-Based Vision Model for Obstacle Avoidance of Mobile Robot

机译:基于CNN的避免移动机器人的视觉模型

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摘要

Exploration in a known or unknown environment for a mobile robot is an essential application. In the paper, we study the mobile robot obstacle avoidance problem in an indoor environment. We present an end-to-end learning model based Convolutional Neural Network (CNN), which takes the raw image obtained from camera as only input. And the method converts directly the raw pixels to steering commands including turn left, turn right and go straight. Training data was collected by a human remotely controlled mobile robot which was manipulated to explore in a structure environment without colliding into obstacles. Our neural network was trained under caffe framework and specific instructions are executed by the Robot Operating System (ROS). We analysis the effect of the datasets from different environments with some marks on training process and several real-time detect experiments were designed. The final test result shows that the accuracy can be improved by increase the marks in a structured environment and our model can get high accuracy on obstacle avoidance for mobile robots.
机译:用于移动机器人的已知或未知环境中的探索是重要的应用。在本文中,我们研究了室内环境中的移动机器人障碍避免问题。我们提出了基于端到端的学习模型的卷积神经网络(CNN),其采用仅作为输入的相机获得的原始图像。该方法将原始像素直接转换为转向命令,包括左转,右转并直线。培训数据由人类远程控制的移动机器人收集,这些移动机器人被操纵以在结构环境中探索而不会碰撞障碍物。我们的神经网络在Caffe框架下培训,具体说明由机器人操作系统(ROS)执行。我们分析了与训练过程中的一些标记不同环境的数据集的效果,并且设计了几个实时检测实验。最终的测试结果表明,通过增加结构化环境中的标记可以提高精度,我们的模型可以对移动机器人的避免避免避免的高准确度。

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