Under unexpected conditions or scenarios, autonomous vehicles (AV) are more likely to follow abnormal unplanned actions, due to the limited set of rules or amount of experience they possess at that time. Enabling AV to measure the degree at which their movements are novel in real-time may help to decrease any possible negative consequences. We propose a method based on the Local Outlier Factor (LOF) algorithm to quantify this novelty measure. We extracted features from the inertial measurement unit (IMU) sensor's readings, which captures the vehicle's motion. We followed a novelty detection approach in which the model is fitted only using the normal data. Using datasets obtained from real-world vehicle missions, we demonstrate that the suggested metric can quantify to some extent the degree of novelty. Finally, a performance evaluation of the model confirms that our novelty metric can be practical.
翻译:在意想不到的条件下或假设情况下,自主车辆更有可能采取异常的意外行动,因为当时它们拥有有限的一套规则或大量经验。使自动飞行器能够测量其实时新运动的程度可能有助于减少任何可能的负面后果。我们提议了一种基于地方外因算法的方法来量化这一新措施。我们从惯性测量单位(IMU)传感器读数中提取了特征,它捕捉了车辆的动作。我们采用了一种新颖的探测方法,即模型只能使用正常数据安装。我们利用从现实世界车辆飞行任务中获取的数据集,我们证明所建议的指标可以在某种程度上量化新现象的程度。最后,对模型的绩效评估证实,我们的新颖指标是实用的。