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A Computational Biological Network for Wood Defect Classification

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Academic year: 2017

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Table 1: Comparisons of different neural networks techniques   for wood defect classification
Fig 2: Feed forward spiking neural network
Table 2: Details of the proposed S-LVQ network  used for wood defect
Fig. 4: A structure proposed for the spiking neural network
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