LGSYMEJan 18, 2025

Assessing Markov Property in Driving Behaviors: Insights from Statistical Tests

arXiv:2501.10625v14 citationsh-index: 4
Originality Synthesis-oriented
AI Analysis

It addresses the foundational assumption of Markov properties in driving behavior models, with implications for AV controllers and traffic simulations, but is incremental as it applies existing statistical methods to new data.

This study validated the Markov property in driving trajectories for autonomous and human-driven vehicles using statistical tests on public datasets, finding that AV trajectories exhibit stronger Markov properties with higher conformity and lower orders compared to more variable HV trajectories.

The Markov property serves as a foundational assumption in most existing work on vehicle driving behavior, positing that future states depend solely on the current state, not the series of preceding states. This study validates the Markov properties of vehicle trajectories for both Autonomous Vehicles (AVs) and Human-driven Vehicles (HVs). A statistical method used to test whether time series data exhibits Markov properties is applied to examine whether the trajectory data possesses Markov characteristics. t test and F test are additionally introduced to characterize the differences in Markov properties between AVs and HVs. Based on two public trajectory datasets, we investigate the presence and order of the Markov property of different types of vehicles through rigorous statistical tests. Our findings reveal that AV trajectories generally exhibit stronger Markov properties compared to HV trajectories, with a higher percentage conforming to the Markov property and lower Markov orders. In contrast, HV trajectories display greater variability and heterogeneity in decision-making processes, reflecting the complex perception and information processing involved in human driving. These results have significant implications for the development of driving behavior models, AV controllers, and traffic simulation systems. Our study also demonstrates the feasibility of using statistical methods to test the presence of Markov properties in driving trajectory data.

Foundations

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