Department of Mechanical Engineering, Fujian Polytechnic of Information Technology, Fuzhou 350003, China.
Department of Automation, University of Science and Technology of China, Hefei 230027, China.
Sensors (Basel). 2019 Mar 6;19(5):1137. doi: 10.3390/s19051137.
Autonomous robots that operate in the field can enhance their security and efficiency by accurate terrain classification, which can be realized by means of robot-terrain interaction-generated vibration signals. In this paper, we explore the vibration-based terrain classification (VTC), in particular for a wheeled robot with shock absorbers. Because the vibration sensors are usually mounted on the main body of the robot, the vibration signals are dampened significantly, which results in the vibration signals collected on different terrains being more difficult to discriminate. Hence, the existing VTC methods applied to a robot with shock absorbers may degrade. The contributions are two-fold: (1) Several experiments are conducted to exhibit the performance of the existing feature-engineering and feature-learning classification methods; and (2) According to the long short-term memory (LSTM) network, we propose a one-dimensional convolutional LSTM (1DCL)-based VTC method to learn both spatial and temporal characteristics of the dampened vibration signals. The experiment results demonstrate that: (1) The feature-engineering methods, which are efficient in VTC of the robot without shock absorbers, are not so accurate in our project; meanwhile, the feature-learning methods are better choices; and (2) The 1DCL-based VTC method outperforms the conventional methods with an accuracy of 80.18%, which exceeds the second method (LSTM) by 8.23%.
自主式机器人在野外作业时,可以通过准确的地形分类来提高其安全性和效率,这可以通过机器人与地形相互作用产生的振动信号来实现。在本文中,我们探索了基于振动的地形分类(VTC),特别是针对带减震器的轮式机器人。由于振动传感器通常安装在机器人主体上,因此振动信号被显著衰减,这导致在不同地形上采集的振动信号更难以区分。因此,应用于带减震器的机器人的现有 VTC 方法可能会降级。我们的贡献有两点:(1)进行了多次实验,以展示现有的特征工程和特征学习分类方法的性能;(2)根据长短时记忆(LSTM)网络,我们提出了一种基于一维卷积 LSTM(1DCL)的 VTC 方法,以学习衰减振动信号的空间和时间特征。实验结果表明:(1)在没有减震器的机器人的 VTC 中效率很高的特征工程方法,在我们的项目中并不是那么准确;同时,特征学习方法是更好的选择;(2)基于 1DCL 的 VTC 方法的准确率为 80.18%,优于传统方法(LSTM),准确率提高了 8.23%。