Identifying High Risk Driving Scenarios Utilizing a CNN-LSTM Analysis Approach*

R. Yu, Haoan Ai, Zhenqi Gao
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引用次数: 2

Abstract

High risk driving scenarios are critical for the deployment of highly automated vehicles virtual test. In this study, we have proposed a deep learning method to identify high risk scenarios from the field operation test (FOT) data. The proposed method tries to overcome the shortcomings of existing relevant studies for their limited utilizations of video data and mainly based upon instant kinematic indicators, which has led to high false alarm rate issue. In this study, a combined video analysis method (Convolutional Neural Network, CNN) and temporal feature analysis model (Long Short-Term Memory, LSTM) was proposed. To be specific, we used CNN-LSTM and Convolutional Neural Networks and Long Short-Term Memory (Resnet-LSTM) to perform the classifications for high risk scenarios and non-conflict scenarios. The empirical analyses have been conducted using commercial vehicle FOT data. And the results showed that the overall model performance (AUC index) in the test set could reach 0.91 with 83% accuracy rate. Finally, the future works have been discussed from the aspects of further extractions of video data and investigations of LSTM modelling results.
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利用CNN-LSTM分析方法识别高风险驾驶情景*
高风险驾驶场景是部署高度自动化车辆虚拟测试的关键。在这项研究中,我们提出了一种深度学习方法来从现场操作测试(FOT)数据中识别高风险场景。本文提出的方法试图克服现有相关研究对视频数据利用有限、主要基于即时运动指标导致虚警率高的缺点。本研究提出了一种卷积神经网络(CNN)与时间特征分析模型(长短期记忆(LSTM))相结合的视频分析方法。具体而言,我们使用CNN-LSTM和卷积神经网络和长短期记忆(Resnet-LSTM)对高风险场景和非冲突场景进行分类。利用商用车FOT数据进行了实证分析。结果表明,该测试集的整体模型性能(AUC指数)达到0.91,准确率达到83%。最后,从视频数据的进一步提取和LSTM建模结果的研究两方面讨论了未来的工作。
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