PATTEREN RECOGNITION
UNIT-V
Un-supervised learning and clustering : Introduction, mixture densities and identifiability, maximum
likelihood estimates, application to normal mixtures, K-means clustering. Date description and clustering –
similarity measures, criteria function for clustering.
UNIT-VI
Component analyses : Principal component analysis, non-linear component analysis; Low dimensional
representations and multi dimensional scaling.
UNIT-VII
Discrete Hidden Morkov Models : Introduction, Discrete–time markov process, extensions to hidden
Markov models, three basic problems for HMMs.
UNIT-VIII
Continuous hidden Markov models : Observation densities, training and testing with continuous HMMs,
types of HMMs.
REFERENCE :
1. Pattern Recognition and Image Analysis – Earl Gose, Richard John baugh, Steve Jost PHI 2004
pattern recognation material is for free download
for download click here
it covers all the above importent topics on patteren recognition material
so enjoy
and all the best for your exams
Monday, May 10, 2010
Subscribe to:
Post Comments (Atom)
0 comments:
Post a Comment