Title :
Telemetry assisted frame registration and background subtraction in low-altitude UAV videos
Author :
Giounona Tzanidou;Pau Climent-Pérez;Georg Hummel;Marc Schmitt;Peter Stütz;Dorothy N. Monekosso;Paolo Remagnino
Author_Institution :
Robot Vision Team, Faculty of Science, Engineering and Computing, Kingston University London Penrhyn Road Campus, KT1 2EE Kingston upon Thames, UK
Abstract :
This work presents an approach to detect moving objects from Unmanned Aerial Vehicles (UAV). A common framework for most of the existing techniques is using image registration to warp consecutive frames as an ego-motion compensation step and applying frame differencing to detect the moving objects. Assuming a planar scene, we propose the exploitation of telemetry information available from Global Positioning and Inertial Navigation Systems (GPS/INS) to estimate a similarity transformation matrix that would map the image points from one frame to another. In this work, we show that the telemetry-based image registration combined with global registration methods produces more accurate results than the traditional image registration techniques in case of a scene with poor or no texture. To segment the moving objects, we employ the probabilistic background modelling method with mixture of Gaussian distributions.
Keywords :
"Discrete Fourier transforms","Cameras","Telemetry","Videos","Global Positioning System","Measurement","Accuracy"
Conference_Titel :
Advanced Video and Signal Based Surveillance (AVSS), 2015 12th IEEE International Conference on
DOI :
10.1109/AVSS.2015.7301779