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Image Recognition of Unsound Wheat Using Artificial Neural Network

机译:基于人工神经网络的不健康小麦图像识别

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The objective of this research is to develop algorithm to recognize unsound wheat based on image processing and artificial neural network. The sample used for this study involved wheat from major producing areas of China. Images of wheat were acquired with a color machine vision system. Each image was processed to extract shape and color quantitative features. All features were analyzed with principal components analysis method. A two-layer back propagation network was created and trained using gradient descent with momentum and adaptive learning rate. Nr. of hidden nodes was tested and early stopping skill was used. The total error of the finally established net is 2.5% for the classification of normal and unsound wheat.
机译:这项研究的目的是开发一种基于图像处理和人工神经网络的识别不健康小麦的算法。这项研究使用的样本来自中国主要产区的小麦。用彩色机器视觉系统获取小麦的图像。每个图像都经过处理以提取形状和颜色定量特征。所有特征均采用主成分分析法进行了分析。创建了一个两层反向传播网络,并使用具有动力和自适应学习率的梯度下降进行训练。 Nr。测试了隐藏节点的数量,并使用了早期停止技能。对于正常小麦和不合格小麦的分类,最终确定的网的总误差为2.5%。

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