Study on Insect Pests Detection Based on Digital Image

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This paper mainly performs Cascade AdaBoost algorithm based on multi-feature to detect the images of Eurydema dominulus, which will cause harm to crucifer. Firstly, the mixing of HAAR features and LBP features is adopted instead of the single-feature of traditional model, which makes description of images more comprehensively from the angle of the gradient and texture. And then use the best features selected by Gentle AdaBoost algorithm to compose the weak classifier and the strong classifier. And the cascade detector is composed of the trained classifiers of each layer according to a certain screening rate. Experimental results show that the method of detection has the probability of dis-detecting and leak-detecting, but it still has a certain reference value in the field of agricultural plant diseases and insect pests detection for its good robustness.

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357-360

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December 2014

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© 2015 Trans Tech Publications Ltd. All Rights Reserved

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[1] Boissard, P., V. Martin and S. Moisan, A cognitive vision approach to early pest detection in greenhouse crops. Computers and Electronics in Agriculture, 2008. 62(2): pp.81-93.

DOI: 10.1016/j.compag.2007.11.009

Google Scholar

[2] Berge, T.W., et al., Towards machine vision based site-specific weed management in cereals. Computers and Electronics in Agriculture, 2012. 81: pp.79-86.

DOI: 10.1016/j.compag.2011.11.004

Google Scholar

[3] Jackman, P., D. Sun and P. Allen, Recent advances in the use of computer vision technology in the quality assessment of fresh meats. Trends in Food Science & Technology, 2011. 22(4): pp.185-197.

DOI: 10.1016/j.tifs.2011.01.008

Google Scholar

[4] L Pez, M.A.M., et al., Innovative tools for detection of plant pathogenic viruses and bacteria. International Microbiology, 2003. 6(4): pp.233-243.

Google Scholar

[5] Bravo, C., et al., Early disease detection in wheat fields using spectral reflectance. Biosystems Engineering, 2003. 84(2): pp.137-145.

DOI: 10.1016/s1537-5110(02)00269-6

Google Scholar

[6] You-wena, T. and L.I. Cheng-huab, Research on Recognition of Cucumber Disease Based on Image Processing in Sunlight Greenhouse [J]. Journal of Agricultural Mechanization Research, 2006. 2: pp.151-153.

Google Scholar

[7] Huang, K., Application of artificial neural network for detecting Phalaenopsis seedling diseases using color and texture features. Computers and Electronics in Agriculture, 2007. 57(1): pp.3-11.

DOI: 10.1016/j.compag.2007.01.015

Google Scholar

[8] Haussler, D., Decision theoretic generalizations of the PAC model for neural net and other learning applications. Information and computation, 1992. 100(1): pp.78-150.

DOI: 10.1016/0890-5401(92)90010-d

Google Scholar

[9] Freund, Y.S.R., A Decision-Theoretic Generalization of On-Line Learning and an Application to Boosting. Journal of Computer and System Sciences, 1997. 55(1): pp.119-139.

DOI: 10.1006/jcss.1997.1504

Google Scholar