TRB Pubsindex
Text Size:

Title:

Improving Efficiency and Effectiveness of Railcar Safety Appliance Inspection Using Machine Vision Technology

Accession Number:

01020080

Record Type:

Component

Availability:

Transportation Research Board Business Office

500 Fifth Street, NW
Washington, DC 20001 United States

Abstract:

Before a train departs a yard, the cars and locomotives undergo inspection, including safety appliance inspection. Safety appliances are handholds, ladders and other objects that serve as the interface between humans and rail cars during transportation. Currently, inspections are carried out by carmen, railroad personnel who are trained in detecting defects in railcars. These inspections are primarily visual and most take place while the inspectors either walk or travel alongside the train in some type of vehicle. Current regulations require that cars be inspected each time a train departs even if they have recently passed previous inspections. A cost model for current safety appliance inspection methods is developed and discussed in this paper. The model considers failure costs, which result from defective safety appliances, and the cost of ensuring defective appliances are caught by inspections, known as improvement costs. Regarding improvement costs, there exists a potential to increase both the effectiveness and efficiency of safety appliance inspections by utilizing machine vision technology to partially automate the car inspection process. Machine vision consists of capturing digital video and using algorithms capable of detecting and analyzing the particular objects or patterns of interest. These systems can objectively inspect railcars without tiring or becoming distracted and can also focus on certain parts of the railcar not easily seen by an inspector on the ground. Benefits of the addition of machine vision to the inspection process are evident in the inspection cost model. Machine vision is being developed for several inspection tasks in the railroad industry and the Association of American Railroads is sponsoring research at the University of Illinois to develop a system for safety appliance inspection. The use of machine vision algorithms makes it possible to recognize the safety appliances on railcars and to identify and report defective appliances. With nearly 1.3 million railroad freight cars in circulation, the development of an algorithm robust enough to detect safety appliance violations on all car types under a variety of environmental conditions is nontrivial. A machine vision system consists of the image acquisition system, algorithms, and the preliminary portable field setup, all of which are discussed in this paper.

Monograph Accession #:

01020180

Report/Paper Numbers:

06-2908

Language:

English

Corporate Authors:

Transportation Research Board

500 Fifth Street, NW
Washington, DC 20001 United States

Authors:

Edwards, Riley
Barkan, Christopher P L
Todorovic, Sinisa
Hart, John M
Ahuja, Narendra

Pagination:

22p

Publication Date:

2006

Conference:

Transportation Research Board 85th Annual Meeting

Location: Washington DC, United States
Date: 2006-1-22 to 2006-1-26
Sponsors: Transportation Research Board

Media Type:

CD-ROM

Features:

Figures (9) ; References (16)

Subject Areas:

Finance; Railroads; Safety and Human Factors; Vehicles and Equipment

Source Data:

Transportation Research Board Annual Meeting 2006 Paper #06-2908

Files:

TRIS, TRB

Created Date:

Mar 3 2006 11:09AM