Czech J. Food Sci., 2014, 32(3):280-287 | DOI: 10.17221/238/2013-CJFS
Identification and classification of bulk paddy, brown, and white rice cultivars with colour features extraction using image analysis and neural networkOriginal Paper
- Department of Agricultural Machinery Engineering, Faculty of Agriculture. Bu-Ali Sina University. Hamedan, Iran
We identify five rice cultivars by mean of developing an image processing algorithm. After preprocessing operations, 36 colour features in RGB, HSI, HSV spaces were extracted from the images. These 36 colour features were used as inputs in back propagation neural network. The feature selection operations were performed using STEPDISC analysis method. The mean classification accuracy with 36 features for paddy, brown and white rice cultivars acquired 93.3, 98.8, and 100%, respectively. After the feature selection to classify paddy cultivars, 13 features were selected for this study. The highest mean classification accuracy (96.66%) was achieved with 13 features. With brown and white rice, 20 and 25 features acquired the highest mean classification accuracy (100%, for both of them). The optimised neural networks with two hidden layers and 36-6-5-5, 36-9-6-5, 36-6-6-5 topologies were obtained for the classification of paddy, brown, and white rice cultivars, respectively. These structures of neural network had the highest mean classification accuracy for bulk paddy, brown and white rice identification (98.8, 100, and 100%, respectively).
Keywords: stepdisc analysis; HSI; HSV back propagation algorithm, bulk images
Published: June 30, 2014 Show citation
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References
- Anami B.S., Burkpalli V., Angadi S.A., Patil N.M. (2003): Neural network approach for grain classification and gradation. In: Proceedings 2nd National Conference on Document Analysis, and Recognition, Mandya, India, July 11-12, 2003: 394-405.
- Anami B. S., Savakar D.G., Makandar A., Unki P.H. (2005): A neural network model for classification of bulk grain samples based on color and texture. In: Proceedings of International Conference on Cognition and Recognition, Mandya, India, December 22-23, 2005: 359-368.
- Anami B.S., Savakis D.G., Unki P.H., Sheelawant S.S. (2006): An artificial neural network model for separation, classification and gradation of bulk grain samples. In: IEEE 1st International Conference on Signal and Image Processing, Hubli, India, December 7-9, 2006: 511-520.
- Anami B.S., Pujari J.D., Yakkundimath R. (2011): Identification and classification of normal and affected agricultural/horticulture produce based on combined color and texture feature extraction. International Journal of Computer Application in Engineering Sciences, 1: 356-360.
- Choudhary R., Paliwl J., Jayas D.S. (2008): Classification of cereal grains using wavelet, morphological, colour, and textural features of non-touching kernel images. Biosystems Engineering, 99: 330-337.
Go to original source...
- Keefe P.D.A. (1992): Dedicated wheat grading system. Plant Varieties and Seeds, 5: 27-33.
- Luo X.Y., Jayas D.S., Symons S.J. (1999a): Identification of damaged kernels in wheat using a color machine vision system. Journal of Cereal Science, 30: 49-59.
Go to original source...
- Luo X.Y., Jayas D.S., Symons S.J. (1999b): Comparison of statistical and neural network methods for classifying cereal grains using machine vision. Transactions of the ASAE, 42: 413-419.
Go to original source...
- Majumdar S., Jayas D.S. (1999). Classification of bulk samples of cereal grains using machine vision system. Journal of Agricultural Engineering Research, 73: 35-47.
Go to original source...
- Majumdar S., Jayas D.S. (2000): Classification of cereal grains using machine vision. III. Texture models. Transactions of the American Society of Agricultural Engineers (ASAE), 43: 1681-1687.
Go to original source...
- Neelamma K.P., Virendra S.M., Yadahalli R.M. (2011): Color and texture based identification and classification of food grains using different color models and haralick features. International Journal on Computer Science and Engineering (IJCSE), 3: 3669-3680.
- Neuman M., Sapirstein H.D., Shwedyk E., Bushuk W. (1989): Wheat grain color analysis by digital image processing: II. Wheat class determination. Journal of Cereal Science, 10: 183-188.
Go to original source...
- Paliwal J., Visen N.S., Jayas D.S. (2001): Evaluation of neural network architectures for cereal grain classification using morphological features. Journal of Agricultural Engineering Research, 79: 361-370.
Go to original source...
- Paliwal J., Borhan M.S., Jayas D.S. (2004): Classification of cereal grains using a flatbed scanner. Canadian Biosystems Engineering, 46: 3.1-3.5.
- Petersen P.H. (1992): Weed seed identification by shape and texture analysis of microscope images. [Ph.D. Dissertation.] The Danish Institute of Plant and Soi1 Science. Copenhagen, Denmark.
- Sansomboonsuk S., Afzulpurkar N. (2008): Machine vision for rice quality evaluation. Technology and Innovation for Sustainable Development Conference (TISD 2008): 343-346.
- Sapirstein H.D., Kohler J.M. (1995): Physical uniformity of graded railcar and vessel shipments of Canada Western Red Spring wheat determined by digital image analysis. Canadian Journal of Plant Science, 75: 363-369.
Go to original source...
- Sapirstein H.D., Kohler J.M. (1999): Effects of sampling and wheat grade on precision and accuracy of kernel features determined by digital image analysis. Cereal Chemistry, 76: 110-115.
Go to original source...
- SAS (2004): SAS/STAT 9.1 Users Guide. SAS Institute Inc., Cary.
- Shantaiya S., Ansari M.U. (2010): Identification of food grain and its quality using pattern classification. International Conference [ICCT-2010], December 3-5, 2010. Special Issue of IJCCT, 2: 70-74.
- Tahir A.R., Neethirajan S., Jayas D.S., Shahin M.A., Symons S.J., White N.D.G. (2007): Evaluation of the effect of moisture content on cereal grains by digital image analysis. Food Research International, 40: 1140-1145.
Go to original source...
- Visen N.S., Paliwal J., Jayas D.S., white N.D.G. (2002): Specialist neural networks for cereal grain classification. Biosystems Engineering, 82: 151-159.
Go to original source...
- Visen N.S., Paliwal J., Jayas D.S., White N.D.G. (2004): Image analysis of bulk grain samples using neural networks. Canadian Biosystems Engineering, 46: 7.11-7.15.
- Yan Z.L., Fang F., Ying Y., Xiu-Qin R. (2005): Identification of rice seed varieties using neural network. Journal of Zhejiang University Science, 6B: 1095-1100.
Go to original source...
Go to PubMed...
- Yi H.K. (2007): Application of artificial neural network for detection Phalaenopsis seeding diseases using color and textural features. Journal of Computers and Electronics in Agriculture, 57: 3-11.
Go to original source...
- Zayas I.Y., Martin C.R., Steele J.L. Katsevich A. (1996): Wheat classification using image analysis and crush force parameters. Transactions of the American Society of Agricultural Engineers (ASAE), 6: 2199-2004.
Go to original source...
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