Figure 1 - uploaded by Md. Delowar Hossain
Content may be subject to copyright.
Post-Processing by Median Filter

Post-Processing by Median Filter

Source publication
Conference Paper
Full-text available
Background subtraction is one of the very challenging tasks in image processing. The performance of the sample consensus-based background modeling consists of intensity correction, dynamically threshold and background sample updating, and post-processing. Therefore, the performance depends on the aforementioned three processes. Most of the research...

Citations

... According to [40], a post-processing operation can play a key role in background/foreground segmentation. The postprocessing operation is carried out as follows. ...
Article
Full-text available
Background subtraction used in object detection, tracking and action recognition is a typical method that separates foreground objects from the background. These applications require accuracy and a complexity reduction technique. Some approaches have been proposed to either increase accuracy or decrease complexity. However, the trade‐off between increasing accuracy and reducing the complexity of background subtraction is a big challenge. To address this issue, a background subtraction‐based real‐time moving object‐detection approach is proposed. The key contribution in authors' proposal is to use a colour image and a novel colour‐gradient blending fused image to achieve accurate background/foreground segmentation. The fused image is a combination of a gradient image and a colour image to correct illumination variations and preserve the edge information. Also, thresholds are adaptively selected based on the dynamic background behaviour to attain a more robust classification system. The proposed model based on real‐time and complex videos from the CD‐2012 and CD‐2014 change detection data sets, and the CMD data set is evaluated. Experimental results indicate that authors' method processes around 43 frames per second and requires six bytes of memory per pixel, which is noticeably more efficient and less complex than other background subtraction methods.