Generating Realistic and Representative Trajectories with Mobility Behavior Clustering.

Haowen Lin, Sina Shaham, Yao-Yi Chiang, Cyrus Shahabi
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Abstract

Accessing realistic human movements (aka trajectories) is essential for many application domains, such as urban planning, transportation, and public health. However, due to privacy and commercial concerns, real-world trajectories are not readily available, giving rise to an important research area of generating synthetic but realistic trajectories. Inspired by the success of deep neural networks (DNN), data-driven methods learn the underlying human decision-making mechanisms and generate synthetic trajectories by directly fitting real-world data. However, these DNN-based approaches do not exploit people's moving behaviors (e.g., work commute, shopping purpose), significantly influencing human decisions during the generation process. This paper proposes MBP-GAIL, a novel framework based on generative adversarial imitation learning that synthesizes realistic trajectories that preserve moving behavior patterns in real data. MBP-GAIL models temporal dependencies by Recurrent Neural Networks (RNN) and combines the stochastic constraints from moving behavior patterns and spatial constraints in the learning process. Through comprehensive experiments, we demonstrate that MBP-GAIL outperforms state-of-the-art methods and can better support decision making in trajectory simulations.

利用移动行为聚类生成真实且具有代表性的轨迹
获取逼真的人体运动轨迹(又称轨迹)对于城市规划、交通和公共卫生等许多应用领域都至关重要。然而,出于隐私和商业方面的考虑,真实世界的轨迹并不容易获得,因此生成合成但真实的轨迹成为一个重要的研究领域。受深度神经网络(DNN)成功的启发,数据驱动方法学习人类决策的基本机制,并通过直接拟合真实世界的数据生成合成轨迹。然而,这些基于 DNN 的方法无法利用人们的移动行为(如上下班、购物目的),从而在生成过程中对人类决策产生重大影响。本文提出了 MBP-GAIL,这是一种基于生成式对抗模仿学习的新型框架,可合成保持真实数据中移动行为模式的逼真轨迹。MBP-GAIL 通过递归神经网络(RNN)对时间依赖性进行建模,并在学习过程中将来自移动行为模式的随机约束和空间约束结合起来。通过综合实验,我们证明 MBP-GAIL 优于最先进的方法,能更好地支持轨迹模拟中的决策制定。
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