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Deep Convolutional Neural Network for Mill Feed Size Characterization

机译:用于轧机馈电尺寸表征的深卷积神经网络

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摘要

Knowing the characteristics of the feed ore size is an important consideration for operations and control of a run-of-mine ore milling circuit. Large feed ore variations are important to detect as they require intervention, whether it be manual by the operator or by an automatic controller. A deep convolutional neural network is used in this work to classify the feed ore images into one of four classes. A VGG16 architecture is used and the classifier is trained making use of transfer learning.
机译:了解饲料矿石尺寸的特性是对矿井矿石铣削电路的操作和控制的重要考虑因素。大型饲料矿石变化对于检测到所需干预时,是重要的,无论是手动还是通过自动控制器。在这项工作中使用深度卷积神经网络,将饲料矿图像分类为四个类中的一个。使用VGG16架构,并且培训分类器利用传输学习。

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