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Segmentation of casting defect regions for the extraction of microstructural properties

机译:分割铸件缺陷区域以提取微结构特性

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Extracting microstructural properties of casting defect regions plays an important role in quality control efforts for casting production. However, it is not easy to extract microstructural properties via the existing extraction strategies because the microstructures of casting defect regions are extremely complex and irregular. In this paper, a 3D convolutional neural network, a nonlinear topological dimension parameter and an empirical model are proposed for extracting the microstructural properties of casting defect regions efficiently. First, taking the 3D region proposal network (RPN), the instance segmentation network (ISN) and the 3D RoIAlign layer as three subnetworks, a 3D convolutional neural network is constructed for the initial segmentation of casting defect regions, and the geometric features of casting defect regions are further characterized according to the nonlinear topological dimension parameter. In the end, based on the nonlinear topological dimension parameter, an empirical model is established for extracting four important microstructural properties of casting defect regions. The experimental results demonstrate that microstructural properties of casting defect regions can be extracted via this method.
机译:提取铸件缺陷区域的微观结构特性在铸件生产的质量控制工作中起着重要作用。然而,由于铸造缺陷区域的微观结构极其复杂且不规则,因此通过现有的抽取策略来抽取微观结构特性并不容易。本文提出了一种3D卷积神经网络,非线性拓扑尺寸参数和经验模型,以有效地提取铸件缺陷区域的微观结构特性。首先,以3D区域提议网络(RPN),实例分割网络(ISN)和3D RoIAlign层为三个子网,构建了3D卷积神经网络,用于铸件缺陷区域的初始分割以及铸件的几何特征根据非线性拓扑尺寸参数进一步表征缺陷区域。最后,基于非线性拓扑尺寸参数,建立了经验模型,用于提取铸件缺陷区域的四个重要的微观组织特性。实验结果表明,通过该方法可以提取铸件缺陷区域的微观结构。

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