Please use this identifier to cite or link to this item: http://hdl.handle.net/123456789/138
Title: Identification and classification of similar looking food grains
Authors: Anami, B. S.
Biradar, Sunanda. D.
Savakar, D. G.
Kulkarni, P. V.
Keywords: Grains Identification, Color-HSV, Texture, Wavelet, BPNN, SVM, classification
Issue Date: Jan-2013
Publisher: Springer
Series/Report no.: 876008-1;
Abstract: This paper describes the comparative study of Artificial Neural Network (ANN) and Support Vector Machine (SVM) classifiers by taking a case study of identification and classification of four pairs of similar looking food grains namely, Finger Millet, Mustard, Soyabean, Pigeon Pea, Aniseed, Cumin-seeds, Split Greengram and Split Blackgram. Algorithms are developed to acquire and process color images of these grains samples. The developed algorithms are used to extract 18 colors-Hue Saturation Value (HSV), and 42 wavelet based texture features. Back Propagation Neural Network (BPNN)-based classifier is designed using three feature sets namely color – HSV, wavelet-texture and their combined model. SVM model for color- HSV model is designed for the same set of samples. The classification accuracies ranging from 93% to 96% for color-HSV, ranging from 78% to 94% for wavelet texture model and from 92% to 97% for combined model are obtained for ANN based models. The classification accuracy ranging from 80% to 90% is obtained for color-HSV based SVM model. Training time required for the SVM based model is substantially lesser than ANN for the same set of images.
URI: http://hdl.handle.net/123456789/138
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