论文标题

使用条件生成对抗网络驱动异常检测

Driving Anomaly Detection Using Conditional Generative Adversarial Network

论文作者

Qiu, Yuning, Misu, Teruhisa, Busso, Carlos

论文摘要

在高级驾驶员辅助系统(ADA)中,异常驾驶检测是一个重要问题。重要的是要尽早确定潜在的危害情景,以避免潜在的事故。这项研究提出了一种无监督的方法,可以使用条件生成对抗网络(GAN)量化驱动异常。该方法通过根据先前观察到的信号调节模型来预测即将到来的驾驶场景。该系统使用鉴别器与预测信号和实际信号之间的输出差为量化驱动段的异常程度的度量。我们采用以驾驶员为中心的方法,考虑了车辆的驾驶员和控制器区域网络总车(CAN-BUS)信号的生理信号。该方法是用卷积神经网络(CNN)实现的,以提取歧视性特征表示,并使用长期短期记忆(LSTM)单元格以捕获时间信息。该研究通过驾驶异常数据集(DAD)进行了实施和评估,其中包括250个小时的自然主义记录,并用驾驶事件注释。实验结果表明,与可能是异常的事件注释的记录,例如避免道路行人和违反交通规则的行为,比没有任何事件注释的录音要高。结果通过感知评估进行了验证,其中要求注释者评估以高异常分数检测到的视频的风险和熟悉度。结果表明,与其他驾驶领域相比,与其他驾驶领域相比,在道路上的异常分数较高的驾驶领域更具风险,并且在道路上越来越少,从而验证了拟议的无监督方法。

Anomaly driving detection is an important problem in advanced driver assistance systems (ADAS). It is important to identify potential hazard scenarios as early as possible to avoid potential accidents. This study proposes an unsupervised method to quantify driving anomalies using a conditional generative adversarial network (GAN). The approach predicts upcoming driving scenarios by conditioning the models on the previously observed signals. The system uses the difference of the output from the discriminator between the predicted and actual signals as a metric to quantify the anomaly degree of a driving segment. We take a driver-centric approach, considering physiological signals from the driver and controller area network-Bus (CAN-Bus) signals from the vehicle. The approach is implemented with convolutional neural networks (CNNs) to extract discriminative feature representations, and with long short-term memory (LSTM) cells to capture temporal information. The study is implemented and evaluated with the driving anomaly dataset (DAD), which includes 250 hours of naturalistic recordings manually annotated with driving events. The experimental results reveal that recordings annotated with events that are likely to be anomalous, such as avoiding on-road pedestrians and traffic rule violations, have higher anomaly scores than recordings without any event annotation. The results are validated with perceptual evaluations, where annotators are asked to assess the risk and familiarity of the videos detected with high anomaly scores. The results indicate that the driving segments with higher anomaly scores are more risky and less regularly seen on the road than other driving segments, validating the proposed unsupervised approach.

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