The Open Automation and Control Systems Journal

2014, 6 : 768-781
Published online 2014 December 31. DOI: 10.2174/1874444301406010768
Publisher ID: TOAUTOCJ-6-768

An Improved Kernel Density Estimation Approach for Moving Objects Detection

Bo Li , Yuhong Li and Han Zhou
College of Computer Science, South-Central University for Nationalities, Wuhan, 430074, China.

ABSTRACT

Moving object detection based on monitoring video system is often a challenging problem. Specially to monitor traffic at both day and night, in different weather and illumination conditions and with changeable background. Kernel Density Estimation (KDE) model is an effective approach to judge background and foreground, however, typical KDE uses fixed parameters, such as bandwidths, threshold, etc. This paper proposes a detection algorithm based on an Improved Kernel Density Estimation (IKDE) model. The proper bandwidths, adaptive background sample learning array, and adaptive threshold, and an improved sample updating method for sample learning array are discussed as the fundamentals of the IKDE model. Furthermore, an algorithm for restraining light field disturbance at night in video scene is proposed. Video image series are evaluated through the algorithm, and moving object detection is conducted in three different scenes. Results show that the algorithm can help to achieve a promising high accuracy and robustness for detecting moving objects.

Keywords:

Adaptability, kernel density estimation, moving object detection, video analysis.