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Estimating Ore Particle Size Distribution using a Deep Convolutional Neural Network ?

机译:使用深卷积神经网络估计矿石粒度分布

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In this work the ore particle size distribution is estimated from an input image of the ore. The normalized weight of ore in each of 10 size classes is reported with good accuracy. A deep convolutional neural network, making use of the VGG16 architecture, is deployed for this task. The goal of using this method is to achieve accurate results without the need for rigorous parameter selection, as is needed with traditional computer vision approaches to this problem. The feed ore particle size distribution has an impact on the performance and control of minerals processing operations. When the ore size distribution undergoes significant changes, operational intervention is usually required (either by the operator or by an automatic controller).
机译:在该工作中,从矿石的输入图像估计矿石粒度分布。报告了10个尺寸类别中的每一个中的矿石的标准化重量,并以良好的准确度报告。为此任务部署了利用VGG16架构的深度卷积神经网络。使用此方法的目标是实现准确的结果,而无需进行严格的参数选择,如此需要传统的计算机视觉方法。进料矿石粒度分布对矿物处理操作的性能和控制产生影响。当矿石尺寸分布经历重大变化时,通常需要操作干预(由操作员或自动控制器)。

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