Title :
A classifier ensemble based on performance level estimation
Author :
Wei Wang ; Yaoyao Zhu ; Xiaolei Huang ; Lopresti, Daniel ; Zhiyun Xue ; Long, Ruixing ; Antani, Sameer ; Thoma, George
Author_Institution :
Dept. of Comput. Sci. & Eng., Lehigh Univ., Bethlehem, PA, USA
fDate :
June 28 2009-July 1 2009
Abstract :
In this paper, we introduce a new classifier ensemble approach, applied to tissue segmentation in optical images of the uterine cervix. Ensemble methods combine the predictions of a set of diverse classifiers. The main contribution of our approach is an effective way of combination based on each classifier´s performance level-namely, the sensitivity p and specificity q, which also produces an optimal estimate of the true segmentation. In comparison with previous work [1] that utilizes the STAPLE algorithm [2] for performance level based combination, this work achieves multiple-observer segmentation in a Bayesian decision framework using the maximum a posterior (MAP) principle, considering each classifier as an observer. In our experiments, we applied our method and several other popular ensemble methods to the problem of detecting Acetowhite regions in cervical images. On 100 images, the overall performance of the proposed method is better than: (i) an overall classifier learned using the entire training set, (ii) average voting ensemble, (iii) ensemble based on the STAPLE algorithm; it is comparable to that of majority voting and that of the (manually picked) best-performing individual classifier in the ensemble set.
Keywords :
belief networks; biological organs; biological tissues; biomedical optical imaging; image classification; image segmentation; maximum likelihood estimation; medical image processing; Bayesian decision framework; acetowhite regions; classifier ensemble; image segmentation; maximum a posterior principle; multiple-observer segmentation; optical imaging; performance level estimation; sensitivity; specificity; tissue; uterine cervix; Bayesian methods; Biomedical imaging; Classification tree analysis; Computer science; Data engineering; Image segmentation; Shape; Support vector machine classification; Support vector machines; Voting; cervigram; classifier ensemble; multiple classifier system; segmentation; sensitivity; specificity;
Conference_Titel :
Biomedical Imaging: From Nano to Macro, 2009. ISBI '09. IEEE International Symposium on
Conference_Location :
Boston, MA
Print_ISBN :
978-1-4244-3931-7
Electronic_ISBN :
1945-7928
DOI :
10.1109/ISBI.2009.5193054