Title of article :
Classification of internally damaged almond nuts using hyperspectral imagery Original Research Article
Author/Authors :
Songyot Nakariyakul، نويسنده , , David P. Casasent، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Hyperspectral transmission spectra of almond nuts are studied for discriminating internally damaged almond nuts from normal ones. We introduce a novel internally damaged almond detection method that requires only two sets of ratio features (the ratio of the responses at two different spectral bands) for classification. Our proposed method avoids exhaustively searching the whole feature space by first ordering the set of ratio features and then choosing the best ratio features based on the ordered set. Use of two sets of ratio features for classification is attractive, since it can be used in real-time practical multispectral sensor systems. Experimental results demonstrate that our method gives a higher classification rate than does use of the best feature selection subset of separate wavebands or than does use of feature extraction algorithms using all wavelength data.
Keywords :
Hyperspectral data , Almond nuts , Product inspection , Feature selection , Ratio features
Journal title :
Journal of Food Engineering
Journal title :
Journal of Food Engineering