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This story is from the category Life
Date posted: 02/12/2011 In 2008, according to the National Highway Traffic Safety Administration, 2.3 million automobile crashes occurred at intersections across the United States, resulting in some 7,000 deaths. More than 700 of those fatalities were due to drivers running red lights. But, according to the Insurance Institute for Highway Safety, half of the people killed in such accidents are not the drivers who ran the light, but other drivers, passengers and pedestrians. In order to reduce the number of accidents at intersections, researchers at MIT have devised an algorithm that predicts when an oncoming car is likely to run a red light. Based on parameters such as the vehicle's deceleration and its distance from a light, the group was able to determine which cars were potential "violators" -- those likely to cross into an intersection after a light has turned red -- and which were "compliant." The researchers tested the algorithm on data collected from an intersection in Virginia, finding that it accurately identified potential violators within a couple of seconds of reaching a red light -- enough time, according to the researchers, for other drivers at an intersection to be able to react to the threat if alerted. Compared to other efforts to model driving behavior, the MIT algorithm generated fewer false alarms, an important advantage for systems providing guidance to human drivers. The researchers report their findings in a paper that will appear in the journal IEEE Transactions on Intelligent Transportation Systems. Jonathan How, the Richard Cockburn Maclaurin Professor of Aeronautics and Astronautics at MIT, says "smart" cars of the future may use such algorithms to help drivers anticipate and avoid potential accidents. "If you had some type of heads-up display for the driver, it might be something where the algorithms are analyzing and saying, 'We're concerned,'" says How, who is one of the paper's authors. "Even though your light might be green, it may recommend you not go, because there are people behaving badly that you may not be aware of." See the full Story via external site: www.sciencedaily.com Most recent stories in this category (Life): 17/09/2014: Do wearable lifestyle activity monitors really work? |
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