In tasks such as tracking, time-series data inevitably carry missing observations. While traditional tracking approaches can handle missing observations, recurrent neural networks (RNNs) are designed to receive input data in every step. Furthermore, current solutions for RNNs, like omitting the missing data or data imputation, are not sufficient to account for the resulting increased uncertainty. Towards this end, this paper introduces an RNN-based approach that provides a full temporal filtering cycle for motion state estimation. The Kalman filter inspired approach, enables to deal with missing observations and outliers. For providing a full temporal filtering cycle, a basic RNN is extended to take observations and the associated belief about its accuracy into account for updating the current state. An RNN prediction model, which generates a parametrized distribution to capture the predicted states, is combined with an RNN update model, which relies on the prediction model output and the current observation. By providing the model with masking information, binary-encoded missing events, the model can overcome limitations of standard techniques for dealing with missing input values. The model abilities are demonstrated on synthetic data reflecting prototypical pedestrian tracking scenarios.
翻译:在诸如跟踪等任务中,时间序列数据不可避免地包含缺失的观测结果。传统跟踪方法可以处理缺失的观测结果,而经常性神经网络(RNN)的设计则是在每一个步骤中接收输入数据。此外,当前对RNN的解决方案,如省略缺失的数据或数据估算,不足以说明由此产生的不确定性的增加。为此,本文件采用了基于RNN的办法,为运动状态估计提供了一个完整的时间过滤周期。卡尔曼过滤器的启发性方法,能够处理缺失的观测结果和外部线。为提供一个完整的时间过滤周期,将基本的RNN扩大到考虑到对当前状态更新的准确性进行观察和相关的信念。模型的预测模型生成了匹配分布以捕捉预测状态,与一个基于预测模型输出和当前观察的RNNN更新模型相结合。通过提供模型掩蔽信息、二元编码的缺失事件,模型可以克服处理缺失输入值的标准技术的局限性。模型能力在反映模拟行进跟踪情景的合成数据上展示。