Localization of robots is vital for navigation and path planning, such as in cases where a map of the environment is needed. Ultra-Wideband (UWB) for indoor location systems has been gaining popularity over the years with the introduction of low-cost UWB modules providing centimetre-level accuracy. However, in the presence of obstacles in the environment, Non-Line-Of-Sight (NLOS) measurements from the UWB will produce inaccurate results. As low-cost UWB devices do not provide channel information, we propose an approach to decide if a measurement is within Line-Of-Sight (LOS) or not by using some signal strength information provided by low-cost UWB modules through a Neural Network (NN) model. The result of this model is the probability of a ranging measurement being LOS which was used for localization through the Weighted-Least-Square (WLS) method. Our approach improves localization accuracy by 16.93% on the lobby testing data and 27.97% on the corridor testing data using the NN model trained with all extracted inputs from the office training data.
翻译:机器人的本地化对于导航和路径规划至关重要,例如,在需要环境地图的情况下,机器人的本地化对于导航和路径规划至关重要。随着多年来引入低成本的世行模块,提供厘米的准确度,室内定位系统的超广频带(UWB)多年来越来越受欢迎。然而,在环境存在障碍的情况下,世行的非月光(NLOS)测量结果将产生不准确的结果。由于低成本的世行装置不提供频道信息,我们建议采用一种方法来决定计量是否在视线之内,或是否使用由世行低成本的世行模块通过Neural网络模型提供的某些信号强度信息。这一模型的结果是,通过Weighted-Least-Squarre(WLS)方法,在本地化方面采用一系列测量的可能性。我们的方法将大厅测试数据的本地化精确度提高16.93%,利用通过从办公室培训数据中提取的所有投入而经过训练的NNW模型,将走廊测试数据提高27.97%。