论文标题
用于血管轨迹预测的经常性编码器 - 码头网络和不确定性估计
Recurrent Encoder-Decoder Networks for Vessel Trajectory Prediction with Uncertainty Estimation
论文作者
论文摘要
船舶轨迹预测的最新深度学习方法能够从历史自动识别系统(AIS)数据中学习复杂的海上模式,并准确预测未来血管位置的序列,预测范围为几个小时。但是,在海上监视应用中,可靠地量化预测不确定性可能与获得高精度一样重要。本文通过探讨如何通过贝叶斯对认知和态度不确定性的贝叶斯建模来扩展轨迹预测任务的深度学习框架。我们根据标记或未标记的输入数据比较了两个不同模型的预测性能,以突出显示如何通过使用有关船舶意图的其他信息(例如,其计划的目的地)如何提高不确定性量化和准确性。
Recent deep learning methods for vessel trajectory prediction are able to learn complex maritime patterns from historical Automatic Identification System (AIS) data and accurately predict sequences of future vessel positions with a prediction horizon of several hours. However, in maritime surveillance applications, reliably quantifying the prediction uncertainty can be as important as obtaining high accuracy. This paper extends deep learning frameworks for trajectory prediction tasks by exploring how recurrent encoder-decoder neural networks can be tasked not only to predict but also to yield a corresponding prediction uncertainty via Bayesian modeling of epistemic and aleatoric uncertainties. We compare the prediction performance of two different models based on labeled or unlabeled input data to highlight how uncertainty quantification and accuracy can be improved by using, if available, additional information on the intention of the ship (e.g., its planned destination).