An Images Monitoring System based on Multi-Format Streaming Grid Architecture
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 32799
An Images Monitoring System based on Multi-Format Streaming Grid Architecture

Authors: Yi-Haur Shiau, Sun-In Lin, Shi-Wei Lo, Hsiu-Mei Chou, Yi-Hsuan Chen

Abstract:

This paper proposes a novel multi-format stream grid architecture for real-time image monitoring system. The system, based on a three-tier architecture, includes stream receiving unit, stream processor unit, and presentation unit. It is a distributed computing and a loose coupling architecture. The benefit is the amount of required servers can be adjusted depending on the loading of the image monitoring system. The stream receive unit supports multi capture source devices and multi-format stream compress encoder. Stream processor unit includes three modules; they are stream clipping module, image processing module and image management module. Presentation unit can display image data on several different platforms. We verified the proposed grid architecture with an actual test of image monitoring. We used a fast image matching method with the adjustable parameters for different monitoring situations. Background subtraction method is also implemented in the system. Experimental results showed that the proposed architecture is robust, adaptive, and powerful in the image monitoring system.

Keywords: Motion detection, grid architecture, image monitoring system, and background subtraction.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1076604

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 1545

References:


[1] S. I. Lin, F. P. Lin, C. L. Chang, S. W. Lo, P. Mai, P. W. Chen, and Y. H. Shiau, "Development of grid-based tiled display wall for networked visualization," Cellular Neural Networks and Their Applications, 2005 9th International Workshop on, 2005.
[2] TDW: http://tdw.nchc.org.tw.
[3] H. Nguyen, P. Duhamel, J. Brouet, and D. Rouffet, "Robust vlc sequence decoding exploiting additional video stream properties with reduced complexity," IEEE International Conference on Multimedia and Expo (ICME), 2004.
[4] VLC: http://www.videolan.org/vlc.
[5] T. Nakajima, "Realtime feedback and on-demand playback system for teaching skill improvement," Computers and Advanced Technology in Education, 2005.
[6] C. Traiperm, and S. Kittitomkun, "High-performance MPEG-4 multipoint conference unit," Networks and Communication System, 2005.
[7] FFMPEG: http://ffmpeg.mplayerhq.hu.
[8] S. Y. Chien, Y. M. Huang, B. Y. Hsieh, S. Y. Ma, and L. G. Chen, "Fast video segmentation algorithm with shadow, cancellation global motion compensation and adaptive threshold technique," IEEE Trans Multimedia, vol. 6, no. 5, pp. 732-748, Oct. 2004.
[9] D. S. Lee, J. J. Hull, and B. Erol, "A Bayesian framework for gaussian mixture background modeling," IEEE Proc. ICIP, vol.3, pp. 973-976, 2003.
[10] K. Kim, T. H. Chalidabhongse, D. Harwood, and L. Davis, "Real-time foreground-background segmentation using codebook model real-time imaging," vol. 11, issue 3, pp. 167-256, Jun. 2005.
[11] Ganglia: http://ganglia.info.