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Fish Classification Based on Robust Features Extraction From Color Signature Using Back-Propagation Classifier

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Academic year: 2017

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Fig. 1: The  pseudo  code  of  the  extracted  features  from  color signature color signature
Table 2: Description of the overall accuracy of training and testing
Fig. 5: The crop out of color signature for different fish  families  ((a)  the  poison  fish  and  (b)  the   non-poison fish)

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