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首页> 外文期刊>Research journal of applied science, engineering and technology >Corn Seed Varieties Classification Based on Mixed Morphological and Color Features Using Artificial Neural Networks
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Corn Seed Varieties Classification Based on Mixed Morphological and Color Features Using Artificial Neural Networks

机译:基于混合形态和颜色特征的人工神经网络玉米种子品种分类。

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摘要

The ability of Multi-Layer Perceptron (MLP) and Neuro-Fuzzy neural networks to classify corn seed varieties based on mixed morphological and color Features has been evaluated that would be helpful for automation of corn handling. This research was done in Islamic Azad University, Shahr-e-Rey Branch, during 2011 on 5 main corn varieties were grown in different environments of Iran. A total of 12 color features, 11 morphological features and 4 shape factors were extracted from color images of each corn kernel. Two types of neural networks contained Multilayer Perceptron (MLP) and Neuro-Fuzzy were used to classify the corn seed varieties. Average classification's accuracy of corn seed varieties were obtained 94% and 96% by MLP and Neuro-Fuzzy classifiers respectively. After feature selection by UTA algorithm, more effective features were selected to decrease the classification processing time, without any meaningful decreasing of accuracies.
机译:评估了多层感知器(MLP)和Neuro-Fuzzy神经网络基于混合形态和颜色特征对玉米种子品种进行分类的能力,这将有助于自动化玉米处理。这项研究是在2011年期间在伊斯兰阿扎德大学Shahr-e-Rey分校进行的,研究了在伊朗不同环境中种植的5个主要玉米品种。从每个玉米粒的彩色图像中共提取了12种颜色特征,11种形态特征和4种形状因子。两种类型的神经网络包含多层感知器(MLP)和Neuro-Fuzzy,用于对玉米种子品种进行分类。利用MLP和Neuro-Fuzzy分类器分别获得了94%和96%的玉米种子平均分类准确率。通过UTA算法选择特征后,选择了更有效的特征以减少分类处理时间,而准确性没有任何有意义的降低。

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