Publication | Open Access
Classification of Peanut Images Based on Multi-features and SVM
29
Citations
16
References
2018
Year
Support Vector MachineImage ClassificationMachine VisionImage AnalysisEngineeringPattern RecognitionImage RetrievalAgricultural EconomicsPeanut ImagesAccurate ClassificationHu Invariant MomentSeed ProcessingComputer VisionConvolution Neural Network
This article provides a method for accurate classification of peanuts. Peanuts can be classified into three categories, including one peanut, two peanuts and three peanuts. Because different peanuts have different prices. The characteristics of peanut images were extracted by three different methods including the convolution neural network of aspect ratio, HOG and Hu invariant moment, and then classifying peanut images respectively by the SVM (support vector machine). The accuracy rate of the aspect ratio + SVM algorithm, HOG+SVM algorithm, Hu invariant moment +SVM algorithm respectively is 96.72%, 81.97% and 81.97%, realize the industrialization of peanut classification.
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