Title :
Motion-vector clustering for traffic speed detection from UAV video
Author :
Ruimin Ke;Sung Kim;Zhibin Li;Yinhai Wang
Author_Institution :
Department of Civil and Environmental Engineering, University of Washington, Seattle, WA, U.S.A.
Abstract :
A novel method for detecting the average speed of traffic from non-stationary aerial video is presented. The method first extracts interest points from a pair of frames and performs interest point tracking with an optical flow algorithm. The output of the optical flow is a set of motion vectors which are k-means clustered in velocity space. The centers of the clusters correspond to the average velocities of traffic and the background, and are used to determine the speed of traffic relative to the background. The proposed method is tested on a 70-frame test sequence of UAV aerial video, and achieves an average error for speed estimates of less than 12%.
Keywords :
"Vehicles","Adaptive optics","Optical imaging","Tracking","Clustering algorithms","Optical sensors","Cameras"
Conference_Titel :
Smart Cities Conference (ISC2), 2015 IEEE First International
DOI :
10.1109/ISC2.2015.7366230