Title :
Harmonic neural networks for on-line learning vector quantisation
Author :
Wang, J.-H. ; Peng, C.-Y. ; Rau, J.-D.
Author_Institution :
Dept. of Electr. Eng., Nat. Taiwan Ocean Univ., Keelung, Taiwan
fDate :
10/1/2000 12:00:00 AM
Abstract :
A self-creating harmonic neural network (HNN) trained with a competitive algorithm effective for on-line learning vector quantisation is presented. It is shown that by employing dual resource counters to record the activity of each node during the training process, the equi-error and equi-probable criteria can be harmonised. Training in HNNs is smooth and incremental, and it not only achieves the biologically plausible on-line learning property, but it can also avoid the stability-plasticity dilemma, the dead-node problem, and the deficiency of the local minimum. Characterising HNNs reveals the great controllability of HNNs in favouring one criterion over the other, when faced with a must-choose situation between equi-error and equi-probable. Comparison studies on learning vector quantisation involving stationary and non-stationary, structured and non-structured inputs demonstrate that the HNN outperforms other competitive networks in terms of quantisation error, learning speed and codeword search efficiency
Keywords :
image coding; neural nets; online operation; unsupervised learning; vector quantisation; codeword search efficiency; competitive algorithm; competitive networks; dual resource counters; equi-error and equi-probable criterion; equi-probable criterion; image coding; learning speed; nonstationary input; nonstructured input; on-line learning VQ; on-line learning vector quantisation; quantisation error; self-creating harmonic neural network; stationary input; structured input;
Journal_Title :
Vision, Image and Signal Processing, IEE Proceedings -
DOI :
10.1049/ip-vis:20000409