A Novel Color Recognition Modeling Method for Bobbin Sorting Machine

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Abstract:

Color recognition plays an important role during the process of bobbin sorting. A new combined method with BPNN and SVM is proposed to establish the color recognition model for bobbin sorting machine. The comparisons are done between the model based on new method and the models based on single BPNN and single SVM. The experiments demonstrate that the new color recognition model has the best learning and generalization abilities.

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2610-2613

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December 2012

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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