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Driver Behavior Analysis And Decisionmaking For Autonomous Driving At Nonsignalized Inner City Intersections Hannes Weinreuter

  • SKU: BELL-237295808
Driver Behavior Analysis And Decisionmaking For Autonomous Driving At Nonsignalized Inner City Intersections Hannes Weinreuter
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Driver Behavior Analysis And Decisionmaking For Autonomous Driving At Nonsignalized Inner City Intersections Hannes Weinreuter instant download after payment.

Publisher: KIT Scientific Publishing
File Extension: PDF
File size: 6.19 MB
Pages: 228
Author: Hannes Weinreuter
ISBN: 9783731513933, 3731513935
Language: English
Year: 2024
Volume: 35

Product desciption

Driver Behavior Analysis And Decisionmaking For Autonomous Driving At Nonsignalized Inner City Intersections Hannes Weinreuter by Hannes Weinreuter 9783731513933, 3731513935 instant download after payment.

The focus of this work is on human driving behavior in road traffic. Two aspects of it are covered, the prediction of it, including the identification of relevant influencing factors, as well as the behavior generation for autonomous vehicles.
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The behavior prediction is based on a field study during which participants drove a measurement vehicle through inner-city traffic. Using the driven trajectories and lidar recordings complexity features to describe the surroundings at the intersection, the traffic there and the driving path are defined. The driving behavior is characterized by further features. Based on the complexity features regression models are trained to predict the behavior features. For that, linear regression, random forest and gradient boosting machine are utilized. Different complexity feature sets, including ones that are reduced with the help of an autoencoder, are used for prediction. The results show that the driving behavior can be predicted reliably. However, when using complexity feature sets with only few features the prediction performance is reduced.
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In order to obtain a complexity score that is in line with human perception of complexity, an online study using videos of approaches to intersections was conducted. In pairwise comparisons participants were asked to identify the more complex situation. From that data complexity scores for the intersection passes included in the study are calculated. Several methods are used to assign these scores to the runs of the original field study. Behavior regression models are trained using these assigned complexity scores. The results show that behavior prediction with the complexity scores is possible, however, most variants require to also consider the turning direction as a second feature.