论文标题

使用时间序列分割和分类的驾驶员操作检测和分析

Driver Maneuver Detection and Analysis using Time Series Segmentation and Classification

论文作者

Aboah, Armstrong, Adu-Gyamfi, Yaw, Gursoy, Senem Velipasalar, Merickel, Jennifer, Rizzo, Matt, Sharma, Anuj

论文摘要

当前的论文实施了一种在自然主义驾驶环境下从车辆遥测数据中自动检测车辆操纵的方法。以前的方法将车辆操纵检测视为分类问题,尽管由于输入遥测数据是连续的,因此需要分段和分类。我们的目标是开发一条端到端的管道,以逐帧注释自然主义驾驶研究视频,以将其转化为各种驾驶事件,包括停车和巷道延伸事件,车道变化,左右转弯运动以及水平曲线操纵。为了解决时间序列分割问题,该研究开发了一种能量最大化算法(EMA),能够从连续信号数据中提取不同持续时间和频率的驾驶事件。为了降低过度拟合和虚假警报率,使用启发式算法来对具有高度可变模式的事件进行分类,例如停车和泳道。为了对分段的驾驶事件进行分类,实施了四个机器学习模型,并在多个数据源中评估了它们的准确性和可传递性。 EMA提取的事件的持续时间与实际事件相当,精度从59.30%(左车道更改)到85.60%(车道保存)不等。此外,1D横向扭转神经网络模型的总体准确性为98.99%,其次是97.75%的长期长期记忆模型,然后以97.71%的范围模型,支持向量机模型为97.65%。这些模型精度在不同的数据源之间保持一致。研究得出的结论是,实施分割分类管道可显着提高驾驶员操作检测的准确性以及跨不同数据集浅层和深ML模型的可转移性。

The current paper implements a methodology for automatically detecting vehicle maneuvers from vehicle telemetry data under naturalistic driving settings. Previous approaches have treated vehicle maneuver detection as a classification problem, although both time series segmentation and classification are required since input telemetry data is continuous. Our objective is to develop an end-to-end pipeline for frame-by-frame annotation of naturalistic driving studies videos into various driving events including stop and lane keeping events, lane changes, left-right turning movements, and horizontal curve maneuvers. To address the time series segmentation problem, the study developed an Energy Maximization Algorithm (EMA) capable of extracting driving events of varying durations and frequencies from continuous signal data. To reduce overfitting and false alarm rates, heuristic algorithms were used to classify events with highly variable patterns such as stops and lane-keeping. To classify segmented driving events, four machine learning models were implemented, and their accuracy and transferability were assessed over multiple data sources. The duration of events extracted by EMA were comparable to actual events, with accuracies ranging from 59.30% (left lane change) to 85.60% (lane-keeping). Additionally, the overall accuracy of the 1D-convolutional neural network model was 98.99%, followed by the Long-short-term-memory model at 97.75%, then random forest model at 97.71%, and the support vector machine model at 97.65%. These model accuracies where consistent across different data sources. The study concludes that implementing a segmentation-classification pipeline significantly improves both the accuracy for driver maneuver detection and transferability of shallow and deep ML models across diverse datasets.

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