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Publication Details
AFRICAN RESEARCH NEXUS
SHINING A SPOTLIGHT ON AFRICAN RESEARCH
engineering
An efficient intensity correction algorithm for high definition video surveillance applications
IEEE Transactions on Circuits and Systems for Video Technology, Volume 21, No. 11, Article 5734819, Year 2011
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Description
The video surveillance market is increasingly moving toward cheaper, efficient, portable, and high resolution systems. A typical video surveillance system consists of several cameras, which issue warnings or initiate smart reactions according to the analysis results of the captured video data. Many algorithms in video surveillance systems assume fixed lighting conditions for the monitored area. The performance of these algorithms is severely affected by the illumination changes of the monitored area. This paper presents an efficient intensity correction algorithm for high definition video surveillance applications. The new algorithm corrects both the global and the local intensity changes. It uses an apparent gain factor to correct the global intensity changes. In addition it corrects the local intensity changes using the local intensity mean and standard deviation. The proposed algorithm shows a promising performance when compared with other intensity correction algorithms. It has a low computational cost that makes it a suitable choice for real-time hardware implementation. This paper also presents a hardware implementation of the proposed algorithm using Xilinx Spartan3A digital signal processor (DSP) XC3SD3400A device. The targeted resolution is 1920×1080 at 30 f/s. The hardware prototype utilizes 17% of the slices, 21% of the block random access memories, and 24% of the DSP48As available in Spartan3A DSP XC3SD3400A device. © 2011 IEEE.
Authors & Co-Authors
Sayed, Mohammed Sharaf
Egypt, Zagazig
Faculty of Engineering
Delva, Justin G.R.
United States, Lexington
Lincoln Laboratory
Statistics
Citations: 13
Authors: 2
Affiliations: 2
Identifiers
Doi:
10.1109/TCSVT.2011.2130290
ISSN:
10518215
Research Areas
Health System And Policy