Comparison of a Neural Network and a Non-parametric Classifier for Grain Kernel Identification
β Scribed by J Paliwal; N.S Visen; D.S Jayas; N.D.G White
- Publisher
- Elsevier Science
- Year
- 2003
- Tongue
- English
- Weight
- 216 KB
- Volume
- 85
- Category
- Article
- ISSN
- 1537-5110
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β¦ Synopsis
The performances of a four-layer backpropagation neural network and a non-parametric statistical classifier were compared for classification of barley, Canada Western Amber Durum wheat, Canada Western Red Spring wheat, oats, and rye. A total of 230 features (51 morphological, 123 colour, and 56 textural) from the high-resolution images of kernels of the five grain types were extracted and used as input features for classification. Different feature models, viz. morphological, colour, texture, and a combination of the three, were tested for their ability to classify these cereal grains. To make the classification process fast, the number of input features were reduced to 60 and 30. A set of features consisting of an equal number of morphological, colour, and textural features gave the best classification accuracies. The neural network classifier outperformed the non-parametric classifier in almost all the instances of classification.
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