Title of article
Identification of important image features for pork and turkey ham classification using colour and wavelet texture features and genetic selection
Author/Authors
Jackman، نويسنده , , Patrick and Sun، نويسنده , , Da-Wen and Allen، نويسنده , , Paul and Valous، نويسنده , , Nektarios A. and Mendoza، نويسنده , , Fernando and Ward، نويسنده , , Paddy، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
7
From page
711
To page
717
Abstract
A method to discriminate between various grades of pork and turkey ham was developed using colour and wavelet texture features. Image analysis methods originally developed for predicting the palatability of beef were applied to rapidly identify the ham grade. With high quality digital images of 50–94 slices per ham it was possible to identify the greyscale that best expressed the differences between the various ham grades. The best 10 discriminating image features were then found with a genetic algorithm. Using the best 10 image features, simple linear discriminant analysis models produced 100% correct classifications for both pork and turkey on both calibration and validation sets.
Keywords
Computer vision , image processing , Colour , Pre-sliced turkey hams , wavelet transform , Genetic algorithms , Pre-sliced pork hams
Journal title
Meat Science
Serial Year
2010
Journal title
Meat Science
Record number
1489765
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