Title :
Multidimensional self organisation
Author :
Johnson, Martin ; Brown, Martin ; Allinson, Nigel
Author_Institution :
Dept. of Electron., York Univ., UK
Abstract :
Presents a technique that may be used for clustering in a very high dimensionality pattern space. The desirability of a self organising algorithm which can learn an internal representation for use in a pattern recogniser is shown. Using such an algorithm, subspace methods are brought together with an associative memory to form a pattern recogniser which employs unsupervised learning. The representation used for signal pattern clusters is based on topologically ordered units, each of which can label a complex area of pattern space. An adaption algorithm is given and shown to be insensitive to the variation in vector magnitudes which is found within a typical training set. A number of examples are given showing clustering of real grey scale, visual data and the reconstruction of exemplars using adaptive feedback. The application of this to vector quantisation and noise removal is demonstrated
Keywords :
adaptive systems; learning systems; neural nets; pattern recognition; self-adjusting systems; topology; adaption algorithm; adaptive feedback; associative memory; clustering; grey scale; learning systems; neural nets; noise removal; pattern recognition; self organising algorithm; vector quantisation; visual data; Associative memory; Clustering algorithms; Eyes; Face detection; Feedback; Image reconstruction; Multidimensional systems; Pattern recognition; Unsupervised learning; Vector quantization;
Conference_Titel :
Cellular Neural Networks and their Applications, 1990. CNNA-90 Proceedings., 1990 IEEE International Workshop on
Conference_Location :
Budapest
DOI :
10.1109/CNNA.1990.207530