Occupancy Detection in Vehicles Using Fisher Vector Image Representation
Yusuf Artan, Peter Paul

TL;DR
This paper compares face detection and image classification methods for vehicle front seat occupancy detection using NIR images, finding that Fisher vector-based classification outperforms deformable part models.
Contribution
It introduces a novel application of Fisher vector image representation for vehicle occupancy detection and demonstrates its superiority over face detection methods.
Findings
Fisher vector classification outperforms face detection in accuracy.
A dataset of 3000 images was used for evaluation.
Image classification is more robust for this application.
Abstract
Due to the high volume of traffic on modern roadways, transportation agencies have proposed High Occupancy Vehicle (HOV) lanes and High Occupancy Tolling (HOT) lanes to promote car pooling. However, enforcement of the rules of these lanes is currently performed by roadside enforcement officers using visual observation. Manual roadside enforcement is known to be inefficient, costly, potentially dangerous, and ultimately ineffective. Violation rates up to 50%-80% have been reported, while manual enforcement rates of less than 10% are typical. Therefore, there is a need for automated vehicle occupancy detection to support HOV/HOT lane enforcement. A key component of determining vehicle occupancy is to determine whether or not the vehicle's front passenger seat is occupied. In this paper, we examine two methods of determining vehicle front seat occupancy using a near infrared (NIR) camera…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Vehicle License Plate Recognition · Advanced Neural Network Applications
