Optimization of Fruit Disease Detection Process: Using Gaussian Filtering Along With Enhanced SVMAuthor : Hardeep Singh and Sandeep Sharma
Volume 7 No.2 July-September 2018 pp 18-20
Fruit disease detection becomes critical since economic and related issues are influenced through the healthy and non-healthy fruits. Technology has advanced and is used to primarily detect and abnormality which is not visible through the naked eye. This paper proposes a new technique of fruit disease detection at early stage for which Gaussian smoothening is used at pre-processing stage along with weighted kernel function within SVM for achieving higher classification accuracy. Feature extraction and selection mechanism uses rank based mechanism that allocates ranks on the basis of predictive significance. The result is obtained in terms of prediction accuracy and mean or average error. Result is optimized by the factor of 10%.
Gaussian Smoothening, Weighted Kernel function, Enhanced SVM, Prediction Accuracy, Mean or Average Error
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