Title of article :
The Research of Feature Extraction Method of Liver Pathological Image Based on Multispatial Mapping and Statistical Properties
Author/Authors :
Liu, Huiling Northeastern University - Shenyang, China , Jiang, Huiyan Northeastern University - Shenyang, China , Xia, Bingbing Northeastern University - Shenyang, China , Yi, Dehui Department of Hepatobiliary Surgery - The First Affiliated Hospital of China Medical University - Shenyang, China
Abstract :
We propose a new feature extraction method of liver pathological image based on multispatial mapping and statistical properties.
For liver pathological images of Hematein Eosin staining, the image of R and B channels can reflect the sensitivity of liver
pathological images better, while the entropy space and Local Binary Pattern (LBP) space can reflect the texture features of the
image better. To obtain the more comprehensive information, we map liver pathological images to the entropy space, LBP space, R
space, and B space. The traditional Higher Order Local Autocorrelation Coefficients (HLAC) cannot reflect the overall information
of the image, so we propose an average correction HLAC feature. We calculate the statistical properties and the average gray value
of pathological images and then update the current pixel value as the absolute value of the difference between the current pixel
gray value and the average gray value, which can be more sensitive to the gray value changes of pathological images. Lastly the
HLAC template is used to calculate the features of the updated image. The experiment results show that the improved features of
the multispatial mapping have the better classification performance for the liver cancer.
Keywords :
Multispatial , LBP , HLAC , Mapping
Journal title :
Computational and Mathematical Methods in Medicine