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  • International Journal Advanced Network Monitoring Controls

 

Article | 27-January-2020

Research on Improved Adaptive ViBe Algorithm For Vehicle Detection

; background difference method is a commonly used moving object detection algorithm. The main idea is to make a distinction between each frame and background model to build the background model and get the moving foreground objects. Background difference method has the ability to adapt to the scene changes in the video background, but if the background model contains foreground objects, it may generate ghosting. Background difference method is one of the most widely used vehicle detection methods because

Kun Jiang, Jianguo Wang

International Journal of Advanced Network, Monitoring and Controls, Volume 4 , ISSUE 4, 11–17

Article | 07-May-2018

Research on Vehicle Detection Method Based on Background Modeling

This paper mainly studies the background difference method in the field of intelligent traffic, proposes a background modeling method base on frame difference, and compares it with the statistical average background model and Gaussian distribution background modeling method. vehicle contour obtained by the morphological method. Finally, experiments were carried out on 4 normal road traffic surveillance videos, the effective detection rate used in this paper reaches 93.75%, which has a certain

Zhichao Lian, Zhongsheng Wang

International Journal of Advanced Network, Monitoring and Controls, Volume 3 , ISSUE 2, 6–9

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