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Estimation of Slag Removal Path using CNN-based Path Probability of Ladle Image Blocks

机译:基于CNN的钢包图像块的路径概率估计渣拆卸路径

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摘要

De-slagging is a task of removing slag on the surface of molten metals, such as steel, in a ladle. In this paper, we propose a method of slag removal path estimation using CNN (Convolution Neural Network) to automate de-slagging task using a robotic machine. From a sequence on images captured from the top of the ladle, we first extract the 2-dimensional trajectory of the slag removal motion of an experienced human operator. Then several image blocks are obtained at sample points along the removal trajectory to train a neural network. The output of the network consists of four labels which represent the probability of four different removal directions of an input image block. To test the trained neural network, we uniformly divide a test ladle image to a fixed-size block with a given stride value. All image blocks are tested and the probability of the four directions are determined and recorded by the trained network. By multiplying the slag probability with the removal direction probability, joint probability of slag removal direction (JPSRD) is introduced. Finally, a slag removal path is estimated by applying the backward tracing method from the endpoint of the ladle so that the estimated path yields the highest JPSRD. A curve fitting is then applied to make smooth slag removal path. The path decision accuracy of an image block is about 90%. We also compare the estimated a slag removal path with that of the experienced operator.
机译:脱渣是在钢包中除去熔融金属表面上的炉渣的任务,如钢包。在本文中,我们提出了一种使用CNN(卷积神经网络)的渣去除路径估计方法,以使用机器人机器自动化脱离脱离任务。从从钢包顶部捕获的图像上的序列,我们首先提取经验丰富的人类操作员的渣移除运动的二维轨迹。然后,沿着移除轨迹在采样点处获得几个图像块以训练神经网络。网络的输出包括四个标签,该标签表示输入图像块的四种不同移除方向的概率。为了测试训练有素的神经网络,我们将测试钢包图像统一地将测试钢包图像划分为具有给定步幅的固定尺寸块。测试所有图像块,并且由训练的网络确定并记录四个方向的概率。通过将渣概率乘以去除方向概率,引入了炉渣去除方向(JPSRD)的关节概率。最后,通过从钢包的终点施加后向跟踪方法来估计矿渣去除路径,使得估计的路径产生最高的JPSRD。然后施加曲线拟合以使炉渣去除路径平滑。图像块的路径决策精度约为90%。我们还将估计的渣拆卸路径与经验丰富的运营商的估计进行比较。

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