Czech J. Food Sci., 2014, 32(5):456-463 | DOI: 10.17221/461/2013-CJFS

Inspection of quince slice dehydration stages based on extractable image featuresOriginal Paper

Abdolabbas JAFARI, Adel BAKHSHIPOUR
1 Farm Machinery Department, Shiraz University, Shiraz, Iran

The relation between the moisture content of the fruit and image-based characteristics was investigated. Quince samples were dried in an oven dryer at three different temperatures (40, 50, and 60°C). Several shape, texture, and colour features of the quince slices were extracted from the images. Gradual reduction was observed in all morphological features when the moisture content of the samples decreased. Regression equations between the extracted features and moisture content of the quince slices were investigated. The moisture content prediction equations based on morphological features were more precise than the textural features while colour information did not yield any satisfactory result. To exploit the morphological and textural features simultaneously, several artificial neural network models were developed to predict the drying behaviour of quince. R2 and RMSE values were determined as 0.998, 0.008%. It was concluded that the combination of the neural networks and image processing technique has the potential to determine the moisture variations.

Keywords: machine vision; neural networks; moisture content; drying; quince

Published: October 31, 2014  Show citation

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JAFARI A, BAKHSHIPOUR A. Inspection of quince slice dehydration stages based on extractable image features. Czech J. Food Sci. 2014;32(5):456-463. doi: 10.17221/461/2013-CJFS.
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References

  1. Chanona P.J.J., Alamilla B.L., Farrera R.R.R., Quevedo R., Aguilera J.M., Gutiérrez L.G.F. (2003): Description of the convective air drying of a food model by means of the fractal theory. Food Science and Technology International, 9: 207-213. Go to original source...
  2. Cubillos F., Reyes A. (2003): Design of a model based on a modular neural network approach. Drying Technology, 21: 1185-1195. Go to original source...
  3. Du C.J., Sun D.W. (2004): Recent developments in the applications of image processing techniques for food quality evaluation. Trends in Food Science and Technology, 15: 230-249. Go to original source...
  4. Farkas I., Remenyi P., Biro B. (2000): A neural network topology for modeling grain drying. Computers and Electronics in Agriculture, 26: 147-158. Go to original source...
  5. Fernández L., Castillero C., Aguilera J.M. (2005): An application of image analysis to dehydration of apple discs. Journal of Food Engineering, 67: 185-193. Go to original source...
  6. Firatligil-Durmus E., Šárka E., Bubník Z. (2008): Image vision technology for the characterisation of shape and geometrical properties of two varieties of lentil grown in Turkey. Czech Journal of Food Sciences, 26: 109-116. Go to original source...
  7. Golpour I., Parian J.A., Chayjan R.A. (2013): Identification and classification of bulk paddy, brown and white rice cultivars with colour features extraction using image analysis and neural network. Czech Journal of Food Sciences, 32: 280-287. Go to original source...
  8. Gonzales R.C., Woods R.E. (2002): Digital Image Processing. 2nd Ed. Prentice-Hall, Inc., New Jersey.
  9. Haralick R.M., Shanmugan K., Dinstein I. (1973): Textural Features for Image Classification. IEEE Transactions on Systems, Man, and Cybernetics, 3: 610-621. Go to original source...
  10. Jayas D.S., Paliwal J., Visen N.S. (2000): Multi-layer neural networks for image analysis of agricultural products. Journal of Agricultural Engineering Research, 77: 119-128. Go to original source...
  11. Kerdpiboon S. Devahastin S. (2007): Fractal characterization of some physical properties of a food product under various drying conditions. Drying Technology, 25: 135-146. Go to original source...
  12. Kiranoudis C.T. Markatos N.C. (2000): Pareto design of conveyor-belt dryers. Journal of Food Engineering, 46: 145-155. Go to original source...
  13. Kit L., Spyridon Y., Papadakis E. (2004): A simple digital imaging method for measuring and analyzing color of food surfaces. Journal of Food Engineering, 61: 137-142. Go to original source...
  14. Menlik T., Özdemir M.B., Kirmaci V. (2010): Determination of freeze-drying behaviours of apples by artificial neural network. Expert Systems with Applications, 37: 7669-7677. Go to original source...
  15. Nasirahmadi A., Behroozi-Khazaei N. (2013): Identification of bean varieties according to color features using artificial neural network. Spanish Journal of Agricultural Research, 11: 670-677. Go to original source...
  16. Park B., Chen Y.R. (2001): Co-occurrence matrix texture features of multi-spectral images on poultry carcasses. Journal of Agricultural Engineering Research, 78: 127-139. Go to original source...
  17. Ramos I.N., Silva C.L.M., Sereno A.M., Aguilera J.M. (2004): Quantification of microstructural changes during first stage air drying of grape tissue. Journal of Food Engineering, 62: 159-164. Go to original source...
  18. Randulová Z., Tremlová B., Řezáčová-Lukášková Z., Pospiech M., Straka I. (2011): Determination of soya protein in model meat products using image analysis. Czech Journal of Food Sciences, 29: 318-321. Go to original source...
  19. Smékal O., Pipek P., Miyahara M., Jeleníková J. (2005): Use of video image analysis for the evaluation of beef carcasses. Czech Journal of Food Sciences, 23: 240-245. Go to original source...
  20. Wu D., Yang H., Chen X., He Y., Li X. (2008): Application of image texture for the sorting of tea categories using multi-spectral imaging technique and support vector machine. Journal of Food Engineering, 88: 474-483. Go to original source...
  21. Yadollahinia A., Jahangiri M. (2009): Shrinkage of potato slices during drying. Journal of Food Engineering, 94: 52-58. Go to original source...

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