2020
DOI: 10.5194/isprs-archives-xliii-b2-2020-623-2020
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Vehicle Tracking and Speed Estimation From Unmanned Aerial Videos

Abstract: Abstract. In this paper, a solution for vehicle speed estimation using unmanned aerial videos is described. First, convolutional neural networks and Kalman filtering using deep features are used for detecting and tracking vehicles. Then, a photogrammetric approach is developed for estimating the three-dimensional (3D) position of the tracked vehicles on the road, which allows determining their speed. No assumptions are made about either the 3D structure of the road (e.g., constraining it to be a planar surface… Show more

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“…Kampker et al proposed a framework [69] in urban scenarios with grid-based techniques and object-based techniques using Lidar raw data. Shahbazi et al used 3D information to determine the speed and estimate the location of trackers with detection and tracking [123].…”
Section: Distance and Long Occlusions Handlingmentioning
confidence: 99%
“…Kampker et al proposed a framework [69] in urban scenarios with grid-based techniques and object-based techniques using Lidar raw data. Shahbazi et al used 3D information to determine the speed and estimate the location of trackers with detection and tracking [123].…”
Section: Distance and Long Occlusions Handlingmentioning
confidence: 99%