DocumentCode :
1705143
Title :
A contextual classifier that only requires one prototype pixel for each class
Author :
Maletti, Gabriela ; Ersboll, B. ; Conradsen, Knut
Author_Institution :
Sect. for Image Anal. & Comput. Graphics, Informatics & Math. Modelling (IMM), Tech. Univ. Denmark, Lyngby, Denmark
Volume :
3
fYear :
2001
Firstpage :
1385
Abstract :
A three stage scheme for classification of multi-spectral images is proposed. In each stage, statistics of each class present in the image are estimated. The user is required to provide only one prototype pixel for each class to be seeded into a homogeneous region. The algorithm starts by generating optimum initial training sets, one for each class, maximizing the redundancy in the data sets. These sets are the realizations of the maximal discs centered on the prototype pixels for which it is true that all the elements belong to the same class as the center one. Afterwards a region growing algorithm increases the sample size providing more statistically valid samples of the classes. Final classification of each pixel is done by comparison of the statistical behavior of the neighborhood of each pixel with the statistical behavior of the classes. A critical sample size obtained from a model constructed with experimental data is used in this stage. The algorithm was tested with the Kappa coefficient k on synthetical images and compared with K-means (k~=0.41) and a similar scheme that uses spectral means (k~=0.75) instead of histograms (k~=0.90). Results are shown on a dermatological image with a malignant melanoma.
Keywords :
image classification; learning (artificial intelligence); medical image processing; skin; statistical analysis; K-means; Kappa coefficient; contextual classifier; data set redundancy; dermatological image; experimental data; histograms; homogeneous region; malignant melanoma; multispectral image classification; optimum initial training sets; prototype pixel; region growing algorithm; spectral means; statistics; supervised classification; window size optimization; Cancer; Convolution; Histograms; Image analysis; Malignant tumors; Multispectral imaging; Pixel; Prototypes; Statistics; Testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Nuclear Science Symposium Conference Record, 2001 IEEE
ISSN :
1082-3654
Print_ISBN :
0-7803-7324-3
Type :
conf
DOI :
10.1109/NSSMIC.2001.1008595
Filename :
1008595
Link To Document :
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