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首页> 外文期刊>Progress in Artificial Intelligence >A Computer Vision System Based on Majority-Voting Ensemble Neural Network for the Automatic Classification of Three Chickpea Varieties
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A Computer Vision System Based on Majority-Voting Ensemble Neural Network for the Automatic Classification of Three Chickpea Varieties

机译:基于多数投票集合神经网络的计算机视觉系统,用于三种鹰嘴豆三种

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Since different varieties of crops have specific applications, it is therefore important to properly identify each cultivar, in order to avoid fake varieties being sold as genuine, i.e., fraud. Despite that properly trained human experts might accurately identify and classify crop varieties, computer vision systems are needed since conditions such as fatigue, reproducibility, and so on, can influence the expert's judgment and assessment. Chickpea (Cicer arietinum L.) is an important legume at the world-level and has several varieties. Three chickpea varieties with a rather similar visual appearance were studied here: Adel, Arman, and Azad chickpeas. The purpose of this paper is to present a computer vision system for the automatic classification of those chickpea varieties. First, segmentation was performed using an Hue Saturation Intensity (HSI) color space threshold. Next, color and textural (from the gray level co-occurrence matrix, GLCM) properties (features) were extracted from the chickpea sample images. Then, using the hybrid artificial neural network-cultural algorithm (ANN-CA), the sub-optimal combination of the five most effective properties (mean of the RGB color space components, mean of the HSI color space components, entropy of GLCM matrix at 90 degrees, standard deviation of GLCM matrix at 0 degrees, and mean third component in YCbCr color space) were selected as discriminant features. Finally, an ANN-PSO/ACO/HS majority voting (MV) ensemble methodology merging three different classifier outputs, namely the hybrid artificial neural network-particle swarm optimization (ANN-PSO), hybrid artificial neural network-ant colony optimization (ANN-ACO), and hybrid artificial neural network-harmonic search (ANN-HS), was used. Results showed that the ensemble ANN-PSO/ACO/HS-MV classifier approach reached an average classification accuracy of 99.10 +/- 0.75% over the test set, after averaging 1000 random iterations.
机译:由于不同品种的作物具有特定应用,因此重要的是正确识别每种品种,以避免假品种作为真实的,即欺诈。尽管训练有素的人体专家可以准确识别和分类作物品种,但需要计算机视觉系统,因为疲劳,再现性等条件,可以影响专家的判断和评估。 Chickpea(Cicer Arietinum L.)是世界一级的重要豆科,有几个品种。这里研究了三种具有相当类似的视觉外观的鹰嘴豆品种:Adel,Arman和Azad Chickpeas。本文的目的是提供一种用于自动分类这些鹰嘴豆品种的计算机视觉系统。首先,使用色调饱和强度(HSI)颜色空间阈值进行分割。接下来,从鹰嘴豆样品图像中提取颜色和纹理(来自灰度共发生矩阵,GLCM)属性(特征)。然后,使用混合人工神经网络文化算法(Ann-CA),五种最有效的属性的次优组合(RGB色彩空间分量的平均值,HSI颜色空间分量的平均值,GLCM矩阵的熵选择90度,在0度下的GLCM矩阵的标准偏差,并且YCBCR颜色空间中的平均第三组分)被选为判别特征。最后,Ann-PSO / ACO / HS大多数投票(MV)集合方法合并三种不同的分类器输出,即混合人工神经网络粒子群综合优化(ANN-PSO),混合人工神经网络 - 蚁群优化(ANN-使用ACO)和混合人工神经网络 - 谐波搜索(Ann-HS)。结果表明,在平均1000个随机迭代之后,集团Ann-PSO / ACO / HS-MV分类器方法在测试集中达到了99.10 +/- 0.75%的平均分类精度。

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