Background Independent Moving Object Segmentation for Video Surveillance
Background Independent Moving Object Segmentation for Video Surveillance
Background modeling is one of the most challenging and time consuming tasks in motion detection from video sequence. This paper presents a background independent moving object segmentation algorithm utilizing the spatio-temporal information of the last three frames. Existing three-frame based methods face challenges due to the insignificant gradient information in the overlapping region of difference images and edge localization errors. These methods extract scattered moving edges and experience poor detection rate especially when objects with slow movement exist in the scene. Moreover, they are not much suitable for moving object segmentation and tracking. The proposed method solves these problems by representing edges as segments and applying a novel segment based flexible edge matching algorithm which makes use of gradient accumulation through distance transformation. Due to working with three most recent frames, the proposed method can adapt to changes in the environment. Segment based representation facilitates local geometric transformation and thus it can make proper use of flexible matching to provide an effective solution for tracking. To segment the moving object region from the detected moving edges, we introduce a watershed based algorithm followed by an iterative background removal procedure. Watershed based segmentation algorithm helps to extract moving object with more accurate boundary which eventually achieves higher coding efficiency in content based applications and ensures a good visual quality even in the limited bit rate multimedia communication.
585-598
Dewan, M. Ali Akber
363af584-4a43-4a28-8f3c-25b78fbd5360
Hossain, M. Julius
bba1b875-7604-462b-a55b-ba0b54f728e8
Chae, Oksam
f3b49af7-329a-4eed-bcd1-33aa737cd234
1 February 2009
Dewan, M. Ali Akber
363af584-4a43-4a28-8f3c-25b78fbd5360
Hossain, M. Julius
bba1b875-7604-462b-a55b-ba0b54f728e8
Chae, Oksam
f3b49af7-329a-4eed-bcd1-33aa737cd234
Dewan, M. Ali Akber, Hossain, M. Julius and Chae, Oksam
(2009)
Background Independent Moving Object Segmentation for Video Surveillance.
IEICE Transactions on Communications, E92.B (2), .
(doi:10.1587/transcom.E92.B.585).
Abstract
Background modeling is one of the most challenging and time consuming tasks in motion detection from video sequence. This paper presents a background independent moving object segmentation algorithm utilizing the spatio-temporal information of the last three frames. Existing three-frame based methods face challenges due to the insignificant gradient information in the overlapping region of difference images and edge localization errors. These methods extract scattered moving edges and experience poor detection rate especially when objects with slow movement exist in the scene. Moreover, they are not much suitable for moving object segmentation and tracking. The proposed method solves these problems by representing edges as segments and applying a novel segment based flexible edge matching algorithm which makes use of gradient accumulation through distance transformation. Due to working with three most recent frames, the proposed method can adapt to changes in the environment. Segment based representation facilitates local geometric transformation and thus it can make proper use of flexible matching to provide an effective solution for tracking. To segment the moving object region from the detected moving edges, we introduce a watershed based algorithm followed by an iterative background removal procedure. Watershed based segmentation algorithm helps to extract moving object with more accurate boundary which eventually achieves higher coding efficiency in content based applications and ensures a good visual quality even in the limited bit rate multimedia communication.
This record has no associated files available for download.
More information
e-pub ahead of print date: 1 February 2009
Published date: 1 February 2009
Identifiers
Local EPrints ID: 467269
URI: http://eprints.soton.ac.uk/id/eprint/467269
PURE UUID: d557f256-d2a1-4ebc-b9d0-7c15b055a63f
Catalogue record
Date deposited: 05 Jul 2022 16:32
Last modified: 17 Mar 2024 04:12
Export record
Altmetrics
Contributors
Author:
M. Ali Akber Dewan
Author:
M. Julius Hossain
Author:
Oksam Chae
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics