Title :
Image data compression using a neural network model
Author :
Sonehara, N. ; Kawato, M. ; Miyake, S. ; Nakane, K.
Author_Institution :
ATR, Kyoto, Japan
Abstract :
Data compression and generalization capabilities are important for neural network models as learning machines. From this point of view, the image data compression characteristics of a neural network model are examined. The applied network model is a feedforward-type, three-layered network with the backpropagation learning algorithm. The implementation of this model on a hypercube parallel computer and its computation performance are described. Image data compression, generalization, and quantization characteristics are examined experimentally. Effects of learning using the discrete cosine transformation coefficients as initial connection weights are shown experimentally.<>
Keywords :
computerised pattern recognition; computerised picture processing; data compression; neural nets; parallel processing; backpropagation; computerised pattern recognition; computerised picture processing; discrete cosine transformation coefficients; hypercube parallel computer; image data compression; learning machines; neural network model; quantization characteristics; Data compression; Image processing; Neural networks; Parallel processing; Pattern recognition;
Conference_Titel :
Neural Networks, 1989. IJCNN., International Joint Conference on
Conference_Location :
Washington, DC, USA
DOI :
10.1109/IJCNN.1989.118675