Identification of rice seed varieties using neural network.

A digital image analysis algorithm based color and morphological features was developed to identify the six varieties (ey7954, syz3, xs11, xy5968, xy9308, z903) rice seeds which are widely planted in Zhejiang Province. Seven color and fourteen morphological features were used for discriminant analysis. Two hundred and forty kernels used as the training data set and sixty kernels as the test data set in the neural network used to identify rice seed varieties. When the model was tested on the test data set, the identification accuracies were 90.00%, 88.00%, 95.00%, 82.00%, 74.00%, 80.00% for ey7954, syz3, xs11, xy5968, xy9308, z903 respectively.

[1]  S. R. Draper,et al.  A computer based system for the recognition of seed shape , 1985 .

[2]  F. S. Lai,et al.  Discrimination between wheat classes and varieties by image analysis , 1986 .

[3]  F. S. Lai,et al.  APPLICATION OF PATTERN RECOGNITION TECHNIQUES IN ANALYSIS OF CEREAL GRAINS , 1986 .

[4]  E. Shwedyk,et al.  Discrimination of wheat class and variety by digital image analysis of whole grain samples , 1987 .

[5]  E. Shwedyk,et al.  An instrumental system for cereal grain classification using digital image analysis , 1987 .

[6]  Stephen J. Symons,et al.  Determination of wheat kernel morphological variation by digital image analysis: II. Variation in cultivars of soft white winter wheats , 1988 .

[7]  Stephen J. Symons,et al.  Determination of wheat kernel morphological variation by digital image analysis: I. Variation in Eastern Canadian milling quality wheats , 1988 .

[8]  D G Myers,et al.  The application of image processing techniques to the identification of Australian wheat varieties. , 1989 .

[9]  E. Shwedyk,et al.  Wheat grain colour analysis by digital image processing II. Wheat class discrimination , 1989 .

[10]  E. Shwedyk,et al.  Wheat grain colour analysis by digital image processing I. Methodology , 1989 .

[11]  S. Majumdar Classification of various grains using optical properties , 1996 .

[12]  X. Luo,et al.  Identification of Damaged Kernels in Wheat using a Colour Machine Vision System , 1999 .

[13]  Digvir S. Jayas,et al.  CLASSIFICATION OF CEREAL GRAINS USING MACHINE VISION: IV. COMBINED MORPHOLOGY, COLOR, AND TEXTURE MODELS , 2000 .

[14]  Jiang Song Study on identification of rice varieties using computer vision , 2004 .

[15]  Tony F. Chan,et al.  Image processing and analysis , 2005 .