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Identification and classification of similar looking food grains

机译:鉴定和分类类似看起来的食物谷物

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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.
机译:本文介绍了人工神经网络(ANN)和支持向量机(SVM)分类器的比较研究,旨在研究四对类似看起来食品谷物的鉴定和分类,即手指小米,芥末,大豆,鸽豌豆,茴香,孜然种子,分裂的绿色镜头和分裂黑色图。开发算法以获取和处理这些谷物样本的彩色图像。开发算法用于提取18种颜色 - 色调饱和值(HSV)和42个基于小波的纹理特征。使用三个特征设置即颜色 - HSV,小波纹理及其组合模型,设计了后传播神经网络(BPNN)的分类器。 Color-HSV模型的SVM模型专为同一组样本而设计。分类精度范围为Color-HSV的93%至96%,对于小波纹理模型的78%至94%,为基于ANN的模型获得了组合模型的92%至97%。基于Color-HSV的SVM模型获得了80%至90%的分类精度。基于SVM模型所需的训练时间基本上小于同一组图像的ANN。

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