Deep-learned pedestrian avoidance policy for robot navigation

Shengjie Hu, Chao Cao, Jia Pan
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引用次数: 3

Abstract

Being able to avoid obstacles and pedestrians in particular, is essential for robots to function in dynamic environments. In contrast with model based methods utilizing primarily computer vision, this project proposed a learning-based approach. Two deep neural networks were trained with images labeled with movement decisions, for pedestrian avoidance and path following tasks, where computer vision labeling and camera order labeling techniques were applied respectively. Together with ultrasonic sensors for static obstacle avoidance, the three components cooperatively contributed to our robot navigation policy. Comparing to existing experiments and research with sophisticated sensors, for instance LIDAR, the project utilized a monocular RGB camera and exploited its capability. Focusing on pedestrian avoidance, the project explores limitations and advantages of deep neural network method. A robot integrating above components was built, and performed satisfactorily in relevant test runs.
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机器人导航的深度学习行人回避策略
能够避开障碍物,尤其是行人,对于机器人在动态环境中发挥作用至关重要。与主要利用计算机视觉的基于模型的方法相比,本项目提出了一种基于学习的方法。用标记了运动决策的图像训练了两个深度神经网络,分别用于行人回避和路径跟踪任务,其中分别应用了计算机视觉标记和相机顺序标记技术。这三部分与用于静态避障的超声波传感器共同构成了我们的机器人导航策略。与现有的复杂传感器(如激光雷达)的实验和研究相比,该项目利用了单目RGB相机,并充分利用了它的能力。本课题以行人避让为重点,探讨了深度神经网络方法的局限性和优势。将上述部件集成在一起,制作了机器人,并在相关的试运行中取得了满意的效果。
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