Identification of vegetable diseases using neural network

Vegetables are widely planted all over China, but they often suffer from the some diseases. A method of major technical and economical importance is introduced in this paper, which explores the feasibility of implementing fast and reliable automatic identification of vegetable diseases and their infection grades from color and morphological features of leaves. Firstly, leaves are plucked from clustered plant and pictures of the leaves are taken with a CCD digital color camera. Secondly, color and morphological characteristics are obtained by standard image processing techniques, for examples, Otsu thresholding method segments the region of interest, image opening following closing algorithm removes noise, Principal Components Analysis reduces the dimension of the original features. Then, a recently proposed boosting algorithm AdaBoost. M2 is applied to RBF networks for diseases classification based on the above features, where the kernel function of RBF networks is Gaussian form with argument taking Euclidean distance of the input vector from a center. Our experiment performs on the database collected by Chinese Academy of Agricultural Sciences, and result shows that Boosting RBF Networks classifies the 230 cucumber leaves into 2 different diseases (downy-mildew and angular-leaf-spot), and identifies the infection grades of each disease according to the infection degrees.

[1]  Mohammed Bennamoun,et al.  Region-based Matching for Robust 3D Face Recognition , 2005, BMVC.

[2]  F. Cheng,et al.  Identification of rice seed varieties using neural network. , 2005, Journal of Zhejiang University. Science. B.

[3]  Tosiyasu L. Kunii,et al.  Recognizing plant species by leaf shapes-a case study of the Acer family , 1998, Proceedings. Fourteenth International Conference on Pattern Recognition (Cat. No.98EX170).

[4]  Paul T. Jackway,et al.  Gradient watersheds in morphological scale-space , 1996, IEEE Trans. Image Process..

[5]  Hui Tian,et al.  Implementing Otsu's thresholding process using area-time efficient logarithmic approximation unit , 2003, Proceedings of the 2003 International Symposium on Circuits and Systems, 2003. ISCAS '03..

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

[7]  Robert E. Schapire,et al.  The strength of weak learnability , 1990, Mach. Learn..

[8]  Patrick de Smet,et al.  Line extraction with the use of an automatic gradient threshold technique and the Hough transform , 2000, Proceedings 2000 International Conference on Image Processing (Cat. No.00CH37101).

[9]  Zhiyong Wang,et al.  Shape based leaf image retrieval , 2003 .

[10]  Yoav Freund,et al.  A decision-theoretic generalization of on-line learning and an application to boosting , 1995, EuroCOLT.

[11]  A. Murat Tekalp,et al.  Closed-form connectivity-preserving solutions for motion compensation using 2-D meshes , 1997, IEEE Trans. Image Process..

[12]  Takeshi Saitoh,et al.  Automatic recognition of blooming flowers , 2004, Proceedings of the 17th International Conference on Pattern Recognition, 2004. ICPR 2004..

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

[14]  Chris Bishop,et al.  Improving the Generalization Properties of Radial Basis Function Neural Networks , 1991, Neural Computation.

[15]  L. Baranyai,et al.  Analysis of fruit and vegetable surface color , 2002 .

[16]  Luc Vincent,et al.  Watersheds in Digital Spaces: An Efficient Algorithm Based on Immersion Simulations , 1991, IEEE Trans. Pattern Anal. Mach. Intell..

[17]  Matti Pietikäinen,et al.  Edge-based method for text detection from complex document images , 2001, Proceedings of Sixth International Conference on Document Analysis and Recognition.

[18]  Tetsuo Asano,et al.  Polynomial-time solutions to image segmentation , 1996, SODA '96.

[19]  Yoshua Bengio,et al.  Boosting Neural Networks , 2000, Neural Computation.

[20]  Pierre Soille,et al.  Morphological Image Analysis: Principles and Applications , 2003 .

[21]  Aude Billard,et al.  Recognition and reproduction of gestures using a probabilistic framework combining PCA, ICA and HMM , 2005, ICML.

[22]  Juan José Rodríguez Diez,et al.  Learning Classification RBF Networks by Boosting , 2001, Multiple Classifier Systems.

[23]  Rafael C. González,et al.  Digital image processing using MATLAB , 2006 .