Title :
Self-Branching Competitive Learning for image segmentation
Author :
Guan, Tao ; Li, Ling Ling
Author_Institution :
Dept. of Comput. Sci. & Applic., Zhengzhou Inst. of Aeronaut. Ind. Manage., Zhengzhou, China
Abstract :
This paper proposes an online competitive learning paradigm, Self-Branching Competitive Learning(SBCL), which uses K-Nearest Neighborhood(KNN) and iterative variance estimation for clustering analysis. SBCL adopts the incremental learning strategy, starts clustering data from one initial prototype and then branches if the bias between vectors is larger than the pre-specified scale. SBCL is unrelated to initial cluster number or data distribution, avoids the dead node problem and suits to analyze the online input data. We apply SBCL to two classical problems: clustering data with mixed Gaussian distributions and segmenting MRI images. The experimental results shew that SBCL has good performance in these problems.
Keywords :
Gaussian distribution; image segmentation; iterative methods; pattern clustering; unsupervised learning; K-nearest neighborhood; MRI images; clustering analysis; clustering data; dead node problem; image segmentation; incremental learning; iterative variance estimation; mixed Gaussian distribution; online competitive learning paradigm; online input data; self-branching competitive learning; Artificial neural networks; Image segmentation; Read only memory; clustering analysis; competitive learning; image segmentation;
Conference_Titel :
Bio-Inspired Computing: Theories and Applications (BIC-TA), 2010 IEEE Fifth International Conference on
Conference_Location :
Changsha
Print_ISBN :
978-1-4244-6437-1
DOI :
10.1109/BICTA.2010.5645201