Title :
Comparison of supervised and unsupervised methods to classify boar acrosomes using texture descriptors
Author :
Alegre, Enrique ; González-Castro, Victor ; Suárez, Sir ; Castejón, Manuel
Author_Institution :
Dept. of Electr., Syst. & Autom. Eng., Univ. of Leon, Leon, Spain
Abstract :
This work compares supervised and unsupervised techniques to classify images of boar sperm heads according to their membrane integrity. We have used 5 different descriptors to characterize the texture of the acrosomes: Laws method, Legendre moments, Zernike moments and 4 and 13 of the features proposed by Haralick extracted from the co-occurrence matrix. We have carried out the classification using Fisher Linear Discriminant Analysis (LDA). Quadratic Discriminant Analysis (QDA), k-Nearest Neighbours and Backpropagation Neural Networks to classify them. Results show that unsupervised classification methods have better performance than supervised ones: The former yield a best error rate 6.11%, while the latter achieved a best error rate of about 9%.
Keywords :
Legendre polynomials; Zernike polynomials; backpropagation; image classification; image texture; matrix algebra; unsupervised learning; Laws method; Legendre moments; Zernike moments; backpropagation neural networks; boar acrosomes classification; co-occurrence matrix; fisher linear discriminant analysis; image classification; k-nearest neighbours; quadratic discriminant analysis; supervised methods; texture descriptors; unsupervised classification; unsupervised methods; Backpropagation; Biomembranes; Error analysis; Head; Linear discriminant analysis; Neural networks; Co-occurrence matrix; Laws; Legendre; Zernike; boar semen; supervised classification; unsupervised classification;
Conference_Titel :
ELMAR, 2009. ELMAR '09. International Symposium
Conference_Location :
Zadar
Print_ISBN :
978-953-7044-10-7