Combining LSTM and MDN Networks for traffic forecasting using the Argoverse Dataset

David Schwab, Sean M. O’Rourke, Breton L. Minnehan
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Abstract

Trajectory forecasting is vital to target tracking, autonomous decision making, and other fields critical to the future of autonomous systems. Tracking algorithms, such as the Kalman Filter, require accurate motion models in order to forecast target trajectories and update state estimates given observation data. Unfortunately, accurate motion models are not always easily de- fined. Of particular interest is forecasting in systems with complex agent-to-agent and agent-to-scene interactions, which are often best represented as a multimodal distribution. Various network architectures tackle this multimodal problem in different ways, but the method used in this work is a mixture density network. The network architecture examined in this work, LSTM2MDN, builds off previous research in combining the renowned long- short term memory (LSTM) network with a mixture density network (MDN) in order to develop accurate distributions for output trajectories.
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结合LSTM和MDN网络使用Argoverse数据集进行流量预测
轨迹预测对于目标跟踪、自主决策以及其他对未来自主系统至关重要的领域至关重要。跟踪算法,如卡尔曼滤波,需要精确的运动模型来预测目标轨迹和更新给定观测数据的状态估计。不幸的是,精确的运动模型并不总是容易定义的。特别感兴趣的是具有复杂代理对代理和代理对场景交互的系统的预测,这些交互通常最好表示为多模态分布。不同的网络架构以不同的方式解决这个多模态问题,但在这项工作中使用的方法是混合密度网络。在这项工作中研究的网络架构LSTM2MDN建立在之前的研究基础上,该研究将著名的长短期记忆(LSTM)网络与混合密度网络(MDN)相结合,以便为输出轨迹开发准确的分布。
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