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The Application of Artificial Neural Network in the Classification of Common Woven Fabrics. Hongbin Jin Shanghai Customs College. Commodity Classification. Fundamental work Mainly performed by people Time-consuming Easy to make mistakes
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The Application of Artificial Neural Network in the Classification of Common Woven Fabrics Hongbin Jin Shanghai Customs College
Commodity Classification • Fundamental work • Mainly performed by people • Time-consuming • Easy to make mistakes • Objective: predict the classification of common woven fabrics using Artificial Neural Network (ANN)
What is ANN • An ANN is a mathematical model based on biological neural networks. • An ANN is characterized by three things: • Architecture • Activation function • Learning algorithm: Back-Propagation (BP)
Artificial Neuron Stimulus Response
x1 (Dominant fiber): cotton x2 (Content): 60% x3 (Secondary fiber): polyester x4 (Weight): 150g/m2 y1 (Chapter): 52 y2 (Order): 10 Methods Woven fabric, weighing 150g/m2, consisting of 60% cotton and 40% staple fibers of polyester 5210
ANN architectures used • One-hidden-layer containing 18 neurons • Two-hidden-layer containing 8+8 neurons • Two-hidden-layer containing 14+8 neurons