A Method for Leather Quality Determination using Fuzzy Neural Networks
نویسندگان
چکیده
In the present work an application of fuzzy neural networks for leather quality determination is investigated. An overview of the surface defects characteristics and their significance has been made. For leather quality estimation the most important features are the size and the location of the defects. These characteristics are measured using image analysis and they are used by fuzzy neural network for determination of the leather quality.
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