Abstract
In this paper, an algorithm is introduced for segmenting the foreground regions present in a human insulin crystal intensity image captured by an in-situ microscope inside of a bioreactor. The segmentation is carried out by classifying all image pixels into pixels belonging to the foreground regions and pixels belonging to the background region. For classification, the local intensity variance at each pixel position is compared to a threshold. Those pixels whose local intensity variance is bigger than the threshold are classified as belonging to the foreground regions. The threshold is estimated as a linear combination of two statistical characteristics of the local intensity variance values at the pixels in the background region. Those statistical characteristics are estimated from the histogram of the local intensity variance values of all image pixels by maximizing a likelihood function using an Expectation and Maximization approach. Misclassifications are corrected by particle filtering. Experimental results on real data revealed a processing time of 11.82 seconds/image, an excellent reliability and a segmentation error of approximately 14 pixels.
| Original language | English |
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| Title of host publication | CONIELECOMP 2011, 21st International Conference on Electrical Communications and Computers |
| Pages | 5-9 |
| Number of pages | 5 |
| DOIs | |
| Publication status | Published - 11 Apr 2011 |
| Event | 21st International Conference on Electronics Communications and Computers, CONIELECOMP 2011 - Cholula, Mexico Duration: 28 Feb 2011 → 2 Mar 2011 |
Conference
| Conference | 21st International Conference on Electronics Communications and Computers, CONIELECOMP 2011 |
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| Country/Territory | Mexico |
| City | Cholula |
| Period | 28 Feb 2011 → 2 Mar 2011 |
ASJC Scopus subject areas
- Computer Networks and Communications
- Hardware and Architecture
- Electrical and Electronic Engineering
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