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      <ref-type name="Journal Article">17</ref-type>
      <contributors>
        <authors>
          <author>A. R. Pazoki 1</author>
          <author>F. Farokhi</author>
          <author>Z. Pazoki</author>
        </authors>
      </contributors>
      <titles>
        <title>CLASSIFICATION OF RICE GRAIN VARIETIES USING TWO ARTIFICIAL NEURAL NETWORKS (MLP AND NEURO-FUZZY)</title>
        <secondary-title>Journal of Animal and Plant Sciences</secondary-title>
        <alt-title>JAPS</alt-title>
      </titles>
      <dates><year>2014</year><pub-dates><date>2014/02/01</date></pub-dates></dates>
      <volume>24</volume>
      <number>1</number>
      <pages>336-343</pages>
      <isbn>1018-7081</isbn>
      <electronic-resource-num>NA</electronic-resource-num>
      <abstract>&lt;p&gt;Artificial neural networks (ANNs) have many applications in various scientific areas such as identification, prediction and image processing. This research was done at the Islamic Azad University, Shahr-e-Rey Branch, during 2011 for classification of 5 main rice grain varieties grown in different environments in Iran. Classification was made in terms of 24 color features, 11 morphological features and 4 shape factors that were extracted from color images of each grain of rice. The rice grains were then classified according to variety by multi layer perceptron (MLP) and neuro-fuzzy neural networks. The topological structure of the MLP model contained 39 neurons in the input layer, 5 neurons (Khazar, Gharib, Ghasrdashti, Gerdeh and Mohammadi) in the output layer and two hidden layers; neuro-fuzzy classifier applied the same structure in input and output layers with 60 rules. Average accuracy amounts for classification of rice grain varieties computed 99.46% and 99.73% by MLP and neuro-fuzzy classifiers alternatively. The accuracy of MLP and neuro-fuzzy networks changed after feature selections were 98.40% and 99.73 % alternatively.&lt;/p&gt;</abstract>
      <keywords><keyword>Artificial neural networks (ANNs), Grain, Multi layer perceptron (MLP), Neuro-Fuzzy, Rice</keyword></keywords>
      <publisher>Pakistan Agricultural Scientists Forum</publisher>
      <urls><related-urls><url>https://thejaps.org.pk/AbstractView.aspx?mid=2014-JAPS-47</url></related-urls></urls>
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