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A fast and efficient segmentation scheme for cell microscopic image
Corresponding Author(s) : G. Lebrun
gilles.lebrun@chbg.unicaen.fr
Cellular and Molecular Biology,
Vol. 53 No. 2: Biomedical signal and image processing - Volume 2
Abstract
microscopic cellular image segmentation schemes must be efficient for reliable analysis and fast to process huge quantity of images. Recent studies have focused on improving segmentation quality. Several segmentation schemes have good quality but processing time is too expensive to deal with a great number of images per day. For segmentation schemes based on pixel classification, the classifier design is crucial since it is the one which requires most of the processing time necessary to segment an image. The main contribution of this work is focused on how to reduce the complexity of decision functions produced by support vector machines (SVM) while preserving recognition rate. Vector quantization is used in order to reduce the inherent redundancy present in huge pixel databases (i.e. images with expert pixel segmentation). Hybrid color space design is also used in order to improve data set size reduction rate and recognition rate. A new decision function quality criterion is defined to select good trade-off between recognition rate and processing time of pixel decision function. The first results of this study show that fast and efficient pixel classification with SVM is possible. Moreover posterior class pixel probability estimation is easy to compute with Platt method. Then a new segmentation scheme using probabilistic pixel classification has been developed. This one has several free parameters and an automatic selection must dealt with, but criteria for evaluate segmentation quality are not well adapted for cell segmentation, especially when comparison with expert pixel segmentation must be achieved. Another important contribution in this paper is the definition of a new quality criterion for evaluation of cell segmentation. The results presented here show that the selection of free parameters of the segmentation scheme by optimisation of the new quality cell segmentation criterion produces efficient cell segmentation.
Keywords
Cell microscopic image
segmentation
pixel classification
quality criterion
SVM
hybrid color space
vector quantization
metaheuristic.
Lebrun, G., Charrier, C., Lezoray, O., Meurie, C., & Cardot, H. (2007). A fast and efficient segmentation scheme for cell microscopic image. Cellular and Molecular Biology, 53(2), 51–61. Retrieved from https://mail.cellmolbiol.org/index.php/CMB/article/view/1117
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