• Pedestrian Incident Detection using Artificial Intelligence (Software Implementation)

    NCDOT Research Project Number: 2019-50

Executive Summary

  • This research project builds on NCDOT RP 2015-18 (“Reduction in Railroad Right-of-Way Incidents”) and 2017-15 (“RailCorridor Trespass Severity Assessment”). This effort focused on the development of a working prototype train-mountedcamera system that will capture trespassing events in the nearby vicinity of moving or stopped trains. This dynamic system captures real-time trespassing data along any rail line, which will be used to better define trespassing issues. In the short term, the tools explored as part of this project will allow rail personnel to explain the extent of trespassing to municipal and law enforcement personnel, as well as the public. Prototype machine learning algorithms, sometimes referred to as “artificial intelligence”, were developed as a part of this project. The algorithms developed showed a lot of promise, even with a very limited library of thermal imagery in its database. Future research efforts should look to increase the image database to continue to increase the confidence in the algorithms ability to capture pedestrian events. Even with such a limited database, the team was able to capture a significant number of events on its test track.

  
Christopher Cunningham
Researchers
  
Christopher Cunningham
  
Jahmal Pullen
  
John W. Kirby

Report Period

  • January 1, 2019 - June 30, 2019

Status

  • Complete

Category

  • Planning, Policy, Programming and Multi-modal

Sub Category

  • Passenger Rail

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