| Article ID: | iaor19982396 |
| Country: | United Kingdom |
| Volume: | 35 |
| Issue: | 9 |
| Start Page Number: | 2397 |
| End Page Number: | 2412 |
| Publication Date: | Sep 1997 |
| Journal: | International Journal of Production Research |
| Authors: | Kim T., Kumara S.R.T. |
| Keywords: | pattern recognition |
This research presents schemes for automated visual inspection for boundary defects and classification using neural networks. An efficient method for representing circular boundaries is proposed utilizing a curvature and circular fitting algorithm. For classification, two types of neural network modelling schemes are established. First, a multi-layer perceptron is discussed for defect classification problems. Second, a Hopfield network is modelled to be used for continuous-type variables by a minimizing energy function. Extensive tests are conducted on the casting parts, then the results of neural networks are compared with those of traditional pattern classifiers.