Background Subtraction Using Running Gaussian Average and Frame Difference
نویسندگان
چکیده
Background Subtraction methods are wildly used to detect moving object from static cameras. It has many applications such as traffic monitoring, human motion capture and recognition, and video surveillance. It is hard to propose a background model which works well under all different situations. Actually, there is no need to propose a pervasive model; it is a good model as long as it works well under a special situation. In this paper, a new method combining Gaussian Average and Frame Difference is proposed. Shadow suppression is not specifically dealt with, because it is considered to be part of the background, and can be subtracted by using an appropriate threshold. At last, a new method is raised to fill small gaps that the detected foreground or the moving objects may contain.
منابع مشابه
Background Subtraction Using Running Gaussian Average: a Color Channel Comparison
Background subtraction methods are widely used to detect moving objects from static cameras. Many different methods have been proposed, reviewed and categorised based on their complexity, speed, memory requirements and accuracy. The Running Gaussian Average is a simple method offering acceptable accuracy and high frame rate while having low memory requirements. Originally this method was propos...
متن کاملHybrid Approach for Key Frame Extraction from Video Sequence
This paper proposed and developed hybrid approach for extraction of key-frames from video sequences from stationary camera. This method first uses histogram difference to extract the candidate key frames from the video sequences, later using Background subtraction algorithm (Mixture of Gaussian) was used to fine tune the final key frames from the video sequences. This developed approach show co...
متن کاملVisual Tracking
In many video surveillance applications, cameras are fixed and we are interested in tracking the motion of the foreground, which could be people or cars. Obviously, frame difference only gives us a rough idea of which regions may contain moving objects, but such a simple method can neither sperate the foreground from the background, nor tell us which image regions are moving regions. As a resul...
متن کاملAdvanced Motion Detection Technique using Running Average Discrete Cosine Transform for Video Surveillance Application
Object detection is always the first important step in video surveillance applications. This paper presents an automated moving object detection technique using background subtraction method. First, a background module generated from the video sequence effectively. Furthermore, the moving objects are detected by comparing current and background frame. Many background subtraction approaches are ...
متن کاملRobust Foreground Extraction Technique Using Gaussian Family Model and Multiple Thresholds
We propose a robust method to extract silhouettes of foreground objects from color video sequences. To cope with various changes in the background, the background is modeled as generalized Gaussian Family of distributions and updated by the selective running average and static pixel observation. All pixels in the input video image are classified into four initial regions using background subtra...
متن کامل