Abstract
This article presents a content-based image classification system to monitor the ripeness process of tomato via investigating and classifying the different maturity/ripeness stages. The proposed approach consists of three phases; namely pre-processing, feature extraction, and classification phases. Since tomato surface color is the most important characteristic to observe ripeness, this system uses colored histogram for classifying ripeness stage. It implements Principal Components Analysis (PCA) along with Support Vector Machine (SVM) algorithms for feature extraction and classification of ripeness stages, respectively. The datasets used for experiments were constructed based on real sample images for tomato at different stages, which were collected from a farm at Minia city. Datasets of 175 images and 55 images were used as training and testing datasets, respectively. Training dataset is divided into 5 classes representing the different stages of tomato ripeness. Experimental results showed that the proposed classification approach has obtained ripeness classification accuracy of 92.72%, using SVM linear kernel function with 35 images per class for training.
This work was partially supported by Grant of SGS No. SP2013/70, VSB - Technical University of Ostrava, Czech Republic., and was supported by the European Regional Development Fund in the IT4Innovations Centre of Excellence project (CZ.1.05/1.1.00/02.0070) and by the Bio-Inspired Methods: research, development and knowledge transfer project, reg. no. CZ.1.07/2.3.00/20.0073 funded by Operational Programme Education for Competitiveness, co-financed by ESF and state budget of the Czech Republic.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Preview
Unable to display preview. Download preview PDF.
Similar content being viewed by others
References
Brezmes, J., Llobet, E., Vilanova, X., Saiz, G., Correig, X.: Fruit ripeness monitoring using an electronic nose. Sensors and Actuators B-Chem. Journal 69(3), 223–229 (2000)
May, Z., Amaran, M.H.: Automated ripeness assessment of oil palm fruit using RGB and fuzzy logic technique. In: Demiralp, M., Bojkovic, Z., Repanovici, A. (eds.) Proc. the 13th WSEAS International Conference on Mathematical and Computational Methods in Science and Engineering (MACMESE 2011), Wisconsin, USA, pp. 52–59 (2011)
Polder, G., van der Heijden, G.W.A.M., Young, I.T.: Spectral Image Analysis for Measuring Ripeness of Tomatoes. Transactions-American Society of Agricultural Engineers International Journal 45(4), 1155–1162 (2002)
Jaffar, A., Jaafar, R., Jamil, N., Low, C.Y., Abdullah, B.: Photogrammetric Grading of Oil Palm Fresh Fruit Bunches. International Journal of Mechanical & Mechatronics Engineering (IJMME) 9(10), 18–24 (2009)
Paulraj, M.P., Hema, C.R., Krishnan, R.P., Radzi, S.S.M.: Color Recognition Algorithm using a Neural Network Model in Determining the Ripeness of a Banana. In: Proc. the International Conference on Man-Machine Systems (ICoMMS), Penang, Malaysia, pp. 2B7-1–2B7-4 (2009)
Rizam, S., YAsmin, A.R.F., Ihsan, M.Y.A., Shazana, K.: Non-destructive Watermelon Ripeness Determination Using Image Processing and Artificial Neural Network (ANN). International Journal of Intelligent Technology 4(2), 130–134 (2009)
Suganthy, M., Ramamoorthy, P.: Principal Component Analysis Based Feature Extraction, Morphological Edge Detection and Localization for Fast Iris Recognition. Journal of Computer Science 8(9), 1428–1433 (2012)
Ada, RajneetKaur: Feature Extraction and Principal Component Analysis for Lung Cancer Detection in CT scan Images. International Journal of Advanced Research in Computer Science and Software Engineering 3(3) (2013)
El-Bendary, N., Zawbaa, H.M., Hassanien, A.E., Snasel, V.: PCA-based Home Videos Annotation System. The International Journal of Reasoning-based Intelligent Systems (IJRIS) 3(2), 71–79 (2011)
Xiao, B.: Principal component analysis for feature extraction of image sequence. In: Proc. International Conference on Computer and Communication Technologies in Agriculture Engineering (CCTAE), Chengdu, China, vol. 1, pp. 250–253 (2010)
Shahbahrami, A., Borodin, D., Juurlink, B.: Comparison between color and texture features for image retrieval. In: Proc. 19th Annual Workshop on Circuits, Systems and Signal Processing (ProRisc 2008), Veldhoven, The Netherlands (2008)
Soman, S., Ghorpade, M., Sonone, V., Chavan, S.: Content Based Image Retrieval using Advanced Color and Texture Features. In: Proc. International Conference in Computational Intelligence (ICCIA 2012), New York, USA (2012)
Wu, Q., Zhou, D.-X.: Analysis of support vector machine classification. J. Comput. Anal. Appl. 8, 99–119 (2006)
Zawbaa, H.M., El-Bendary, N., Hassanien, A.E., Abraham, A.: SVM-based Soccer Video Summarization System. In: Proc. the Third IEEE World Congress on Nature and Biologically Inspired Computing (NaBIC 2011), Salamanca, Spain, pp. 7–11 (2011)
Zawbaa, H.M., El-Bendary, N., Hassanien, A.E., Kim, T.-H.: Machine learning-based soccer video summarization system. In: Kim, T.-H., Gelogo, Y. (eds.) MulGraB 2011, Part II. CCIS, vol. 263, pp. 19–28. Springer, Heidelberg (2011)
Tzotsos, A., Argialas, D.: A support vector machine approach for object based image analysis. In: Proc. International Conference on Object-based Image Analysis (OBIA 2006), Salzburg, Austria (2006)
Zhang, Y., Xie, X., Cheng, T.: Application of PSO and SVM in image classification. In: Proc. 3rd IEEE International Conference on Computer Science and Information Technology (ICCSIT), Chengdu, China, vol. 6, pp. 629–631 (2010)
Suralkar, S.R., Karode, A.H., Pawade, P.W.: Texture Image Classification Using Support Vector Machine. International Journal of Computer Applications in Technology 3(1), 71–75 (2012)
Yu, H., Li, M., Zhang, H.-J., Feng, J.: Color texture moments for content-based image retrieval. In: Proc. International Conference on Image Processing, New York, USA, vol. 3, pp. 929–932 (2002)
Liu, Y., Zheng, Y.F.: One-against-all multi-class SVM classification using reliability measures. In: Proc. IEEE International Joint Conference on Neural Networks (IJCNN 2005), Montreal, Quebec, Canada, vol. 2, pp. 849–854 (2005)
U.S.D.A. United States Standards for Grades of Fresh Tomatoes, U.S. Dept. Agric./AMS, Washington, DC (1991), http://www.ams.usda.gov/standards/vegfm.htm (accessed: March, 2013); Nose, Sensors and Actuators B 2000 69, 223–229; Signals and fruit quality indicators on shelf-life measurements with pinklady apples. Sensors and Actuators B 2001 80, 41–50
Author information
Authors and Affiliations
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2014 Springer International Publishing Switzerland
About this paper
Cite this paper
Elhariri, E., El-Bendary, N., Fouad, M.M.M., Platoš, J., Hassanien, A.E., Hussein, A.M.M. (2014). Multi-class SVM Based Classification Approach for Tomato Ripeness. In: Abraham, A., Krömer, P., Snášel, V. (eds) Innovations in Bio-inspired Computing and Applications. Advances in Intelligent Systems and Computing, vol 237. Springer, Cham. https://doi.org/10.1007/978-3-319-01781-5_17
Download citation
DOI: https://doi.org/10.1007/978-3-319-01781-5_17
Publisher Name: Springer, Cham
Print ISBN: 978-3-319-01780-8
Online ISBN: 978-3-319-01781-5
eBook Packages: EngineeringEngineering (R0)