Driving pattern interpretation based on action phases clustering
Xue Yao, Simeon C. Calvert, Serge P. Hoogendoorn

TL;DR
This paper introduces an unsupervised framework for interpreting driving patterns by classifying action phases, revealing six distinct patterns in real-world datasets and demonstrating its potential for understanding driving heterogeneity.
Contribution
A novel unsupervised framework for classifying action phases to interpret driving patterns, addressing label scarcity and improving driving behavior analysis.
Findings
Identified six driving patterns in real-world datasets.
Unstable patterns are more prevalent than stable ones.
Framework aligns with the dynamic nature of driving behaviors.
Abstract
Current approaches to identifying driving heterogeneity face challenges in comprehending fundamental patterns from the perspective of underlying driving behavior mechanisms. The concept of Action phases was proposed in our previous work, capturing the diversity of driving characteristics with physical meanings. This study presents a novel framework to further interpret driving patterns by classifying Action phases in an unsupervised manner. In this framework, a Resampling and Downsampling Method (RDM) is first applied to standardize the length of Action phases. Then the clustering calibration procedure including ''Feature Selection'', ''Clustering Analysis'', ''Difference/Similarity Evaluation'', and ''Action phases Re-extraction'' is iteratively applied until all differences among clusters and similarities within clusters reach the pre-determined criteria. Application of the framework…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Video Surveillance and Tracking Methods
MethodsALIGN
