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Traffic Light Status Detection Using Movement Patterns of Vehicles

Posted on:2017-01-14Degree:M.SType:Thesis
University:Arizona State UniversityCandidate:Campbell, JosephFull Text:PDF
GTID:2462390014463199Subject:Computer Science
Abstract/Summary:
Traditional methods for detecting the status of traffic lights used in autonomous vehicles may be susceptible to errors, which is troublesome in a safety-critical environment. In the case of vision-based recognition methods, failures may arise due to disturbances in the environment such as occluded views or poor lighting conditions. Some methods also depend on high-precision meta-data which is not always available. This thesis proposes a complementary detection approach based on an entirely new source of information: the movement patterns of other nearby vehicles. This approach is robust to traditional sources of error, and may serve as a viable supplemental detection method. Several different classification models are presented for inferring traffic light status based on these patterns. Their performance is evaluated over real-world and simulation data sets, resulting in up to 97% accuracy in each set.
Keywords/Search Tags:Traffic, Status, Patterns, Detection
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