This paper presents the application of three di erent types of neural networks to the 2-D pattern recognition on the basis of its shape. They include the multilayer perceptron (MLP), Kohonen self-organizing network and hybrid structure composed of the self-organizing layer and the MLP subnetwork con
Character recognition using Fourier descriptors and a new form of dynamic semisupervised neural network
✍ Scribed by Ian P. Morns; Satnam S. Dlay
- Publisher
- Elsevier Science
- Year
- 1997
- Tongue
- English
- Weight
- 887 KB
- Volume
- 28
- Category
- Article
- ISSN
- 0026-2692
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✦ Synopsis
A new neural network is presented for pattern recognition tasks. This new network., called the Dynamic Supervised Forward-Propagation Network (DSFPN), although based upon the unsupervised Counterpropagation Network (CPN), trains using a supervised aIgorithm. In addition it allows unsupervised dynamic growth of the learning layer permitting unknown subclasses to be learnt. The cIassification capabilities of the network are tested using handwritten numerals presented as Fourier descriptors. The results are compared with those of a Back Propagation Network (BPN) and a Counterpropagation Network.
This comparison shows the new network can provide as high a classification accuracy as the BPN and train in a time comparable to the CPN. On average the DSFPN trained in l/1353 of the epochs required to train the BPN whilst producing a considerably higher accuracy than the CPN.
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