Automatic Bus Stop Detection with Deep Neural Networks and Bi-directional LSTM

Jitpinun Piriyataravet, W. Kumwilaisak, J. Chinrungrueng
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Abstract

This paper presents a novel method in bus stop prediction from bus GPS trajectories. Our proposed bus stop prediction algorithm is based on the deep neural network and time filtering algorithm. Bus speed histograms of all locations along a route are first constructed. A bus speed histogram and a bus heading direction at each location are input features of a deep neural network. A deep neural network consists of the CNN networks and fully connected networks. The outputs from a deep neural network of all locations along a route are inputs to the LSTM network. It outputs soft decisions of bus stop prediction of all locations. The time filtering algorithm refines the results obtained from the LSTM network. It constructs time histograms of all locations and extracts the most probable timestamps of all locations. Then, a linear regression method is used to correct timestamps. Time distributions can be derived from the updated timestamp and are compared with a reference distribution. Locations with time distributions close to the reference distributions are predicted as bus stop locations. We compare our algorithm on a set of GPS data of NSTDA bus service. The proposed technique can outperform conventional bus prediction methods.
基于深度神经网络和双向LSTM的公交车站自动检测
本文提出了一种基于公交GPS轨迹的公交站点预测新方法。我们提出了基于深度神经网络和时间滤波算法的公交车站预测算法。首先构造路线上所有位置的公交速度直方图。每个位置的公交速度直方图和公交行驶方向是深度神经网络的输入特征。深度神经网络由CNN网络和全连接网络组成。一条路线上所有位置的深度神经网络的输出是LSTM网络的输入。它输出所有位置的公交车站预测软决策。时间滤波算法对LSTM网络得到的结果进行了细化。构造所有位置的时间直方图,提取所有位置最可能的时间戳。然后,采用线性回归方法对时间戳进行校正。时间分布可以从更新的时间戳导出,并与参考分布进行比较。时间分布接近参考分布的位置被预测为公交车站位置。以NSTDA总线的GPS数据为例,对算法进行了比较。该方法优于传统的总线预测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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