Driving in traffic: Short-range sensing for urban collision avoidance
Intelligent vehicles are beginning to appear on the market, but so far their sensing and warning functions only work on the open road. Functions such as runoff-road warning or adaptive cruise control are designed for the uncluttered environments of open highways. We are working on the much more diff...
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2002
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sg-smu-ink.sis_research-92512023-11-10T09:06:52Z Driving in traffic: Short-range sensing for urban collision avoidance THORPE, Chuck DUGGINS, Dave GOWDY, Jay MACLAUGHLIN, Rob MERTZ, Christoph SIEGEL, Mel SUPPE, Arne WANG, Bob YATA, Teruko Intelligent vehicles are beginning to appear on the market, but so far their sensing and warning functions only work on the open road. Functions such as runoff-road warning or adaptive cruise control are designed for the uncluttered environments of open highways. We are working on the much more difficult problem of sensing and driver interfaces for driving in urban areas. We need to sense cars and pedestrians and curbs and fire plugs and bicycles and lamp posts; we need to predict the paths of our own vehicle and of other moving objects; and we need to decide when to issue alerts or warnings to both the driver of our own vehicle and (potentially) to nearby pedestrians. No single sensor is currently able to detect and track all relevant objects. We are working with radar, ladar, stereo vision, and a novel light-stripe range sensor. We have installed a subset of these sensors on a city bus, driving through the streets of Pittsburgh on its normal runs. We are using different kinds of data fusion for different subsets of sensors, plus a coordinating framework for mapping objects at an abstract level. 2002-04-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/8248 info:doi/10.1117/12.474450 https://ink.library.smu.edu.sg/context/sis_research/article/9251/viewcontent/file.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Artificial Intelligence and Robotics |
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Artificial Intelligence and Robotics THORPE, Chuck DUGGINS, Dave GOWDY, Jay MACLAUGHLIN, Rob MERTZ, Christoph SIEGEL, Mel SUPPE, Arne WANG, Bob YATA, Teruko Driving in traffic: Short-range sensing for urban collision avoidance |
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Intelligent vehicles are beginning to appear on the market, but so far their sensing and warning functions only work on the open road. Functions such as runoff-road warning or adaptive cruise control are designed for the uncluttered environments of open highways. We are working on the much more difficult problem of sensing and driver interfaces for driving in urban areas. We need to sense cars and pedestrians and curbs and fire plugs and bicycles and lamp posts; we need to predict the paths of our own vehicle and of other moving objects; and we need to decide when to issue alerts or warnings to both the driver of our own vehicle and (potentially) to nearby pedestrians. No single sensor is currently able to detect and track all relevant objects. We are working with radar, ladar, stereo vision, and a novel light-stripe range sensor. We have installed a subset of these sensors on a city bus, driving through the streets of Pittsburgh on its normal runs. We are using different kinds of data fusion for different subsets of sensors, plus a coordinating framework for mapping objects at an abstract level. |
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THORPE, Chuck DUGGINS, Dave GOWDY, Jay MACLAUGHLIN, Rob MERTZ, Christoph SIEGEL, Mel SUPPE, Arne WANG, Bob YATA, Teruko |
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THORPE, Chuck DUGGINS, Dave GOWDY, Jay MACLAUGHLIN, Rob MERTZ, Christoph SIEGEL, Mel SUPPE, Arne WANG, Bob YATA, Teruko |
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THORPE, Chuck |
title |
Driving in traffic: Short-range sensing for urban collision avoidance |
title_short |
Driving in traffic: Short-range sensing for urban collision avoidance |
title_full |
Driving in traffic: Short-range sensing for urban collision avoidance |
title_fullStr |
Driving in traffic: Short-range sensing for urban collision avoidance |
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Driving in traffic: Short-range sensing for urban collision avoidance |
title_sort |
driving in traffic: short-range sensing for urban collision avoidance |
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Institutional Knowledge at Singapore Management University |
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2002 |
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https://ink.library.smu.edu.sg/sis_research/8248 https://ink.library.smu.edu.sg/context/sis_research/article/9251/viewcontent/file.pdf |
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