Toward Low-Flying Autonomous MAV Trail Navigation using Deep Neural Networks for Environmental Awareness

arXiv (Cornell University)(2017)

引用 291|浏览98
暂无评分
摘要
We present a micro aerial vehicle (MAV) system, built with inexpensive off-the-shelf hardware, for autonomously following trails in unstructured, outdoor environments such as forests. The system introduces a deep neural network (DNN) called TrailNet for estimating the view orientation and lateral offset of the MAV with respect to the trail center. The DNN-based controller achieves stable flight without oscillations by avoiding overconfident behavior through a loss function that includes both label smoothing and entropy reward. In addition to the TrailNet DNN, the system also utilizes vision modules for environmental awareness, including another DNN for object detection and a visual odometry component for estimating depth for the purpose of low-level obstacle detection. All vision systems run in real time on board the MAV via a Jetson TX1. We provide details on the hardware and software used, as well as implementation details. We present experiments showing the ability of our system to navigate forest trails more robustly than previous techniques, including autonomous flights of 1 km.
更多
查看译文
关键词
low-flying autonomous MAV trail navigation,Jetson TX1,label smoothing,entropy reward,outdoor environments,unstructured environments,off-the-shelf hardware,microaerial vehicle system,autonomous flights,forest trails,vision systems,low-level obstacle detection,environmental awareness,vision modules,TrailNet DNN,loss function,overconfident behavior,stable flight,trail center,view orientation,deep neural network
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要