Open Access Open Access  Restricted Access Subscription Access

Background Construction of Video Frames in Video Surveillance System Using Pixel Frequency Accumulation


Affiliations
1 Department of Computer Science, College of Science, University of Mustansiriyah (UOM), Iraq
 

Moving object detection has been widely used in diverse discipline such as intelligent transportation systems, airport security systems, video monitoring systems, and so on. In this paper we proposed an edge segment based statistical background modeling algorithm, which can be implemented for moving edge detection in video surveillance system using static camera. The proposed method is an edge segment based, so it can help to exceed some of the difficulties that face traditional pixel based methods in updating background model or bringing out ghosts while a sudden change occurs in the background.As an edge segment based method it is robust to illumination variation and noise, it is also robust against the traditional difficulties that faces existing pixel based methods like the scattering of the moving edge pixels. Therefore they can’t utilize edge shape information. Some other edge segment based methods treat every edge segment equally creating edge mismatch due to non stationary background. The proposed method found elegant solution to this lake by using a model that uses the statistics of each background edge segment, so that it can model both the static and partially moving background edges using ordinary training images that may even contain moving objects.

Keywords

Background Modeling, Statistical Distribution Map, Moving Edge Segment, Edge Segment Matching.
User
Notifications
Font Size

Abstract Views: 233

PDF Views: 0




  • Background Construction of Video Frames in Video Surveillance System Using Pixel Frequency Accumulation

Abstract Views: 233  |  PDF Views: 0

Authors

Jalal H. Awad
Department of Computer Science, College of Science, University of Mustansiriyah (UOM), Iraq
Amir S. Almallah
Department of Computer Science, College of Science, University of Mustansiriyah (UOM), Iraq

Abstract


Moving object detection has been widely used in diverse discipline such as intelligent transportation systems, airport security systems, video monitoring systems, and so on. In this paper we proposed an edge segment based statistical background modeling algorithm, which can be implemented for moving edge detection in video surveillance system using static camera. The proposed method is an edge segment based, so it can help to exceed some of the difficulties that face traditional pixel based methods in updating background model or bringing out ghosts while a sudden change occurs in the background.As an edge segment based method it is robust to illumination variation and noise, it is also robust against the traditional difficulties that faces existing pixel based methods like the scattering of the moving edge pixels. Therefore they can’t utilize edge shape information. Some other edge segment based methods treat every edge segment equally creating edge mismatch due to non stationary background. The proposed method found elegant solution to this lake by using a model that uses the statistics of each background edge segment, so that it can model both the static and partially moving background edges using ordinary training images that may even contain moving objects.

Keywords


Background Modeling, Statistical Distribution Map, Moving Edge Segment, Edge Segment Matching.