#230:
K. Palaniappan,
M. Poostchi,
H. Aliakbarpour,
R. Viguier,
J. Fraser,
F. Bunyak,
A. Basharat,
S. Suddarth,
E. Blasch,
R. Rao, and
G. Seetharaman
Proc. IEEE International Conference on Pattern Recognition (ICPR),
2016
Abstract,
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Most Wide Area Motion Imagery (WAMI) based trackers use motion based cueing for detecting and tracking moving objects. The results are very high false alarm rates in urban environments with tall structures due to parallax effects. This paper proposes an accurate moving object detection method using a precise orthorectification approach for ground stabilization combined with accurate multiview depth maps for reducing the number of false positives induced by parallax effects by 90 percent. Proposed hybrid moving vehicle detection approach for large scale aerial urban imagery is based on fusion of motion detection mask obtained from median-based background subtraction and tall structures height mask provided by image depth map information. Using Building's height map, we are able to improve the object level detection accuracy in terms of F-measure by almost 57 percent from 22.2 percent to 79.2 percent.
@inproceedings{Poostchi_2016_ICPR_Tracking,
author = "K. Palaniappan and M. Poostchi and H. Aliakbarpour and R. Viguier and J. Fraser and F. Bunyak and A. Basharat and S. Suddarth and E. Blasch and R. Rao and G. Seetharaman",
title = "Moving object detection for vehicle tracking in wide area motion imagery using 4D filtering",
year = 2016,
journal = "Proc. IEEE International Conference on Pattern Recognition (ICPR)",
month = "Dec",
keywords = "wami, tracking",
url = "http://icpr2016.org/"
}
K. Palaniappan, M. Poostchi, H. Aliakbarpour, R. Viguier, J. Fraser, F. Bunyak, A. Basharat, S. Suddarth, E. Blasch, R. Rao, and G. Seetharaman. Moving object detection for vehicle tracking in wide area motion imagery using 4D filtering. Proc. IEEE International Conference on Pattern Recognition (ICPR), December 2016.