Conference Proceeding

Neural stem cell segmentation using local complex phase information

Dept. of Control Sci. & Eng., Harbin Inst. of Technol., Harbin, China
Proceedings / ICIP ... International Conference on Image Processing 10/2010; DOI:10.1109/ICIP.2010.5652071 pp.3637 - 3640 In proceeding of: Image Processing (ICIP), 2010 17th IEEE International Conference on
Source: IEEE Xplore

ABSTRACT Segmentation of neural stem cells is the preliminary step to treat and cure several brain neural diseases. There exist a number of methods to accomplish this task. However, all of these methods suffer from some problems, such as high intensity variation sensitivity, human interaction and high computational complexity. In this paper we proposed a novel edge-detection-based neural stem cell image segmentation algorithm using the local complex phase characteristics. The proposed method is an illumination and contrast invariant measurement of edge significance. Our contributions are that, local weighting summation Gaussian kernel convolution and a new model for phase deviation weighting function are introduced into the proposed model to improve the local phase measurement. In experiments, we show that the proposed method is more accurate and reliable than three existing gradient-based edge detection algorithms and Kovesi's model for neural stem cell image segmentation.

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Keywords

brain neural diseases
 
cell image segmentation
 
cell image segmentation algorithm
 
contrast invariant measurement
 
edge significance
 
gradient-based edge detection algorithms
 
human interaction
 
intensity variation sensitivity
 
Kovesi's model
 
local complex phase characteristics
 
local phase measurement
 
local weighting summation Gaussian kernel convolution
 
new model
 
novel edge-detection-based neural
 
phase deviation weighting function
 
preliminary step
 
proposed method
 
reliable
 
Segmentation
 

Taoyi Chen