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On Salience-Sensitive Sign Classification in Autonomous Vehicle Path Planning: Experimental Explorations with a Novel Dataset

Ross Greer, J. M. Isa, Nachiket Deo, Akshay Rangesh, Mohan M. Trivedi

202214 citationsDOI

Abstract

Safe path planning in autonomous driving is a complex task due to the interplay of static scene elements and uncertain surrounding agents. While all static scene elements are a source of information, there is asymmetric importance to the information available to the ego vehicle. We present a dataset with a novel feature, sign salience, defined to indicate whether a sign is distinctly informative to the goals of the ego vehicle with regards to traffic regulations. Using convolutional networks on cropped signs, in tandem with experimental augmentation by road type, image coordinates, and planned maneuver, we predict the sign salience property with 76% accuracy, finding the best improvement using information on vehicle maneuver with sign images.

Topics & Concepts

Salience (neuroscience)Computer scienceTraffic signSign (mathematics)Artificial intelligenceComputer visionMotion planningFeature (linguistics)Pattern recognition (psychology)RobotMathematicsMathematical analysisLinguisticsPhilosophyAutonomous Vehicle Technology and SafetyAdvanced Neural Network ApplicationsVideo Surveillance and Tracking Methods
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