利用车辆轨迹数据识别变道意图的机器学习模型比较分析

IF 2.7 Q2 CONSTRUCTION & BUILDING TECHNOLOGY
Renteng Yuan, Shengxuan Ding, Chenzhu Wang
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引用次数: 0

摘要

准确检测和预测变道(LC)过程可以帮助自动驾驶汽车更好地了解周围环境,识别潜在的安全隐患,提高交通安全性。本研究的重点是LC过程,利用车辆轨迹数据选择一个模型来识别车辆LC意图。考虑纵向和横向两个维度,从车辆轨迹数据中提取的信息包括目标与相邻车辆(54个指标)之间的交互效应作为输入参数。目标车辆的LC意图作为输出度量。本研究比较了三种广泛认可的机器学习模型:支持向量机(SVM)、集成方法(EM)和长短期记忆(LSTM)网络。采用十重交叉验证法进行模型训练和评估。分类精度和训练复杂度作为评价模型性能的关键指标。从CitySim数据集中共提取了1023条车辆轨迹。结果表明,在输入长度为150帧的情况下,XGBoost和LightGBM模型的总体分类性能分别达到了令人印象深刻的98.4%和98.3%。结果表明,与LSTM和SVM模型相比,两种集成模型降低了I类和III类误差的影响,精度提高了约3.0%。在不牺牲识别精度的情况下,与XGBoost模型相比,LightGBM模型的训练效率提高了六倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Analysis of Machine-Learning Models for Recognizing Lane-Change Intention Using Vehicle Trajectory Data
Accurate detection and prediction of the lane-change (LC) processes can help autonomous vehicles better understand their surrounding environment, recognize potential safety hazards, and improve traffic safety. This study focuses on the LC process, using vehicle trajectory data to select a model for identifying vehicle LC intentions. Considering longitudinal and lateral dimensions, the information extracted from vehicle trajectory data includes the interactive effects among target and adjacent vehicles (54 indicators) as input parameters. The LC intention of the target vehicle serves as the output metric. This study compares three widely recognized machine-learning models: support vector machines (SVM), ensemble methods (EM), and long short-term memory (LSTM) networks. The ten-fold cross-validated method was used for model training and evaluation. Classification accuracy and training complexity were used as critical metrics for evaluating model performance. A total of 1023 vehicle trajectories were extracted from the CitySim dataset. The results indicate that, with an input length of 150 frames, the XGBoost and LightGBM models achieve an impressive overall classification performance of 98.4% and 98.3%, respectively. Compared to the LSTM and SVM models, the results show that the two ensemble models reduce the impact of Types I and III errors, with an improved accuracy of approximately 3.0%. Without sacrificing recognition accuracy, the LightGBM model exhibits a sixfold improvement in training efficiency compared to the XGBoost model.
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来源期刊
Infrastructures
Infrastructures Engineering-Building and Construction
CiteScore
5.20
自引率
7.70%
发文量
145
审稿时长
11 weeks
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