CYCVFeb 25, 2023

Non-Intrusive Driver Behavior Characterization From Road-Side Cameras

arXiv:2302.13125v12 citationsh-index: 26
Originality Incremental advance
AI Analysis

This provides a non-intrusive, low-cost method for traffic management, particularly useful for mixed manual and automated vehicle scenarios.

The paper tackled the problem of characterizing driver behavior using only roadside cameras, achieving classification accuracies within 1-2% of direct vehicle-based methods.

In this paper, we demonstrate a proof of concept for characterizing vehicular behavior using only the roadside cameras of the ITS system. The essential advantage of this method is that it can be implemented in the roadside infrastructure transparently and inexpensively and can have a global view of each vehicle's behavior without any involvement of or awareness by the individual vehicles or drivers. By using a setup that includes programmatically controlled robot cars (to simulate different types of vehicular behaviors) and an external video camera set up to capture and analyze the vehicular behavior, we show that the driver classification based on the external video analytics yields accuracies that are within 1-2\% of the accuracies of direct vehicle-based characterization. We also show that the residual errors primarily relate to gaps in correct object identification and tracking and thus can be further reduced with a more sophisticated setup. The characterization can be used to enhance both the safety and performance of the traffic flow, particularly in the mixed manual and automated vehicle scenarios that are expected to be common soon.

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