IRIS: Intelligent Roadway Image Segmentation

The problem of roadway navigation and obstacle avoidance for unmanned ground vehicles has typically needed very expensive sensing to operate properly. To reduce the cost of sensing, it is proposed that an algorithm be developed that uses a single visual camera to image the roadway, determine where t...

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Main Author: Brown, Ryan Charles
Other Authors: Mechanical Engineering
Format: Others
Published: Virginia Tech 2014
Subjects:
Online Access:http://hdl.handle.net/10919/49105
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spelling ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-491052020-09-29T05:41:59Z IRIS: Intelligent Roadway Image Segmentation Brown, Ryan Charles Mechanical Engineering Wicks, Alfred L. Bird, John P. Meehan, Kathleen Unmanned Ground Vehicles Robotic Perception Roadway Perception Image Segmentation Lane Modeling The problem of roadway navigation and obstacle avoidance for unmanned ground vehicles has typically needed very expensive sensing to operate properly. To reduce the cost of sensing, it is proposed that an algorithm be developed that uses a single visual camera to image the roadway, determine where the lane of travel is in the image, and segment that lane. The algorithm would need to be as accurate as current lane finding algorithms as well as faster than a standard k- means segmentation across the entire image. This algorithm, named IRIS, was developed and tested on several sets of roadway images. The algorithm was tested for its accuracy and speed, and was found to be better than 86% accurate across all data sets for an optimal choice of algorithm parameters. IRIS was also found to be faster than a k-means segmentation across the entire image. IRIS was found to be adequate for fulfilling the design goals for the algorithm. IRIS is a feasible system for lane identification and segmentation, but it is not currently a viable system. More work to increase the speed of the algorithm and the accuracy of lane detection and to extend the inherent lane model to more complex road types is needed. IRIS represents a significant step forward in the single camera roadway perception field. Master of Science 2014-06-24T08:01:19Z 2014-06-24T08:01:19Z 2014-06-23 Thesis vt_gsexam:3059 http://hdl.handle.net/10919/49105 In Copyright http://rightsstatements.org/vocab/InC/1.0/ ETD application/pdf application/pdf Virginia Tech
collection NDLTD
format Others
sources NDLTD
topic Unmanned Ground Vehicles
Robotic Perception
Roadway Perception
Image Segmentation
Lane Modeling
spellingShingle Unmanned Ground Vehicles
Robotic Perception
Roadway Perception
Image Segmentation
Lane Modeling
Brown, Ryan Charles
IRIS: Intelligent Roadway Image Segmentation
description The problem of roadway navigation and obstacle avoidance for unmanned ground vehicles has typically needed very expensive sensing to operate properly. To reduce the cost of sensing, it is proposed that an algorithm be developed that uses a single visual camera to image the roadway, determine where the lane of travel is in the image, and segment that lane. The algorithm would need to be as accurate as current lane finding algorithms as well as faster than a standard k- means segmentation across the entire image. This algorithm, named IRIS, was developed and tested on several sets of roadway images. The algorithm was tested for its accuracy and speed, and was found to be better than 86% accurate across all data sets for an optimal choice of algorithm parameters. IRIS was also found to be faster than a k-means segmentation across the entire image. IRIS was found to be adequate for fulfilling the design goals for the algorithm. IRIS is a feasible system for lane identification and segmentation, but it is not currently a viable system. More work to increase the speed of the algorithm and the accuracy of lane detection and to extend the inherent lane model to more complex road types is needed. IRIS represents a significant step forward in the single camera roadway perception field. === Master of Science
author2 Mechanical Engineering
author_facet Mechanical Engineering
Brown, Ryan Charles
author Brown, Ryan Charles
author_sort Brown, Ryan Charles
title IRIS: Intelligent Roadway Image Segmentation
title_short IRIS: Intelligent Roadway Image Segmentation
title_full IRIS: Intelligent Roadway Image Segmentation
title_fullStr IRIS: Intelligent Roadway Image Segmentation
title_full_unstemmed IRIS: Intelligent Roadway Image Segmentation
title_sort iris: intelligent roadway image segmentation
publisher Virginia Tech
publishDate 2014
url http://hdl.handle.net/10919/49105
work_keys_str_mv AT brownryancharles irisintelligentroadwayimagesegmentation
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