Year 2017, Volume 2, Issue 1, Pages 161 - 166 2017-02-25

Moving Object Detection Using an Adaptive Background Modeling in Dynamic Scene

M.Fatih SAVAS [1]

284 330

Determination of moving foreground objects in dynamic scenes for video surveillance systems is still a problem can not be resolved exactly. In the literature; pixel-based, block-based and texture-based methods have been proposed  to solve this problem. The method we propose will be block-based method which can be applied to real time in dynamic scenes. We have created non-overlapped  blocks with the averages the pixels in the gray level. We used this average value to generate the background model based on a modified original KDE (Kernel Density Estimation) method. To determine the moving foreground objects and  to update background model, we use an adaptive parameter which is determined  according to  the number of changes in the state of this pixel during the last N frames. Performance evaluation of the proposed method is tested by background methods in literature without applying post-processing techniques. Experimental results demonstrate the effectiveness and robustness of our method.

Background modeling, Moving object, Background update
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Subjects Engineering
Journal Section Makaleler
Authors

Author: M.Fatih SAVAS
Country: Turkey


Bibtex @ { ejens292867, journal = {European Journal of Engineering and Natural Sciences}, issn = {}, eissn = {2458-8156}, address = {CNR Çevre}, year = {2017}, volume = {2}, pages = {161 - 166}, doi = {}, title = {Moving Object Detection Using an Adaptive Background Modeling in Dynamic Scene}, key = {cite}, author = {SAVAS, M.Fatih} }
APA SAVAS, M . (2017). Moving Object Detection Using an Adaptive Background Modeling in Dynamic Scene. European Journal of Engineering and Natural Sciences, 2 (1), 161-166. Retrieved from http://dergipark.gov.tr/ejens/issue/27741/292867
MLA SAVAS, M . "Moving Object Detection Using an Adaptive Background Modeling in Dynamic Scene". European Journal of Engineering and Natural Sciences 2 (2017): 161-166 <http://dergipark.gov.tr/ejens/issue/27741/292867>
Chicago SAVAS, M . "Moving Object Detection Using an Adaptive Background Modeling in Dynamic Scene". European Journal of Engineering and Natural Sciences 2 (2017): 161-166
RIS TY - JOUR T1 - Moving Object Detection Using an Adaptive Background Modeling in Dynamic Scene AU - M.Fatih SAVAS Y1 - 2017 PY - 2017 N1 - DO - T2 - European Journal of Engineering and Natural Sciences JF - Journal JO - JOR SP - 161 EP - 166 VL - 2 IS - 1 SN - -2458-8156 M3 - UR - Y2 - 2017 ER -
EndNote %0 European Journal of Engineering and Natural Sciences Moving Object Detection Using an Adaptive Background Modeling in Dynamic Scene %A M.Fatih SAVAS %T Moving Object Detection Using an Adaptive Background Modeling in Dynamic Scene %D 2017 %J European Journal of Engineering and Natural Sciences %P -2458-8156 %V 2 %N 1 %R %U
ISNAD SAVAS, M.Fatih . "Moving Object Detection Using an Adaptive Background Modeling in Dynamic Scene". European Journal of Engineering and Natural Sciences 2 / 1 (February 2017): 161-166.