Open Data and Quantitative Techniques for Anthropology of Road Traffic
Ajda Pretnar \v{Z}agar, Toma\v{z} Ho\v{c}evar, Toma\v{z} Curk

TL;DR
This paper demonstrates how publicly available road traffic data can be analyzed quantitatively to uncover patterns and outliers in human mobility, providing valuable insights for anthropological research.
Contribution
It introduces computational methods for analyzing traffic data to support anthropological questions and highlights the usefulness of open data in preliminary fieldwork.
Findings
Traffic data reveals travel patterns and seasonal habits.
Clustering identifies main traffic profiles and outliers.
Quantitative analysis guides future anthropological fieldwork.
Abstract
What kind of questions about human mobility can computational analysis help answer? How to translate the findings into anthropology? We analyzed a publicly available data set of road traffic counters in Slovenia to answer these questions. The data reveals interesting information on how a nation drives, how it travels for tourism, which locations it prefers, what it does during the week and the weekend, and how its habits change during the year. We conducted the empirical analysis in two parts. First, we defined interesting traffic spots and designed computational methods to find them in a large data set. As shown in the paper, traffic counters hint at potential causes and effects in driving practices that we can interpret anthropologically. Second, we used clustering to find groups of similar traffic counters as described by their daily profiles. Clustering revealed the main features of…
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Taxonomy
TopicsImage Processing and 3D Reconstruction · Human Pose and Action Recognition
