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Deep learning approach for segmentation of plain carbon steel microstructure images

机译:深度学习方法用于碳素钢显微组织图像的分割

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摘要

To bring about variation in the physical and structural properties or grade of a metal, it is made to undergo specific heat treatment procedures; which can be customized to make the metal microstructure evolve desirably, to obtain specific targeted properties. Recently, computer-based simulations of such heat treatment procedures have become popular, however, such simulations are feasible only if the digital microstructure images are available in suitable forms (optimal digital forms of the microstructure images means the distinct grains identified and the grain boundaries demarcated, i.e., segmentation of microstructure images). To this end, the authors propose a deep learning based Generative Adversarial Network (GAN) architecture for steel microstructure image segmentation. The authors' experimental results prove the performance efficiency of the proposed GAN model, as compared to the state-of-the-art. However, the proposed network architecture requires large volumes of training data, in the form of annotated ground truth segmentation masks. The current literature lacks sufficient segmented steel microstructure images for this training, to the best of their knowledge. Hence, their second contribution in this study is the development of a Convolutional Neural Network-based framework for sufficient ground truths generation, to aid in the proposed segmentation network training.
机译:为了使金属的物理和结构特性或品位发生变化,需要对金属进行特定的热处理程序。可以对其进行定制,以使金属微结构理想地发展,以获得特定的目标性能。最近,这种热处理程序的基于计算机的模拟变得很流行,但是,只有当数字显微组织图像以合适的形式可用时,这种模拟才是可行的(显微组织图像的最佳数字形式意味着已识别出不同的晶粒并且划定了晶界,即显微图像的分割)。为此,作者提出了一种基于深度学习的生成对抗网络(GAN)体系结构,用于钢微结构图像分割。作者的实验结果证明了与最新技术相比,所提出的GAN模型的性能效率。但是,提出的网络体系结构需要大量的训练数据,以带注释的地面真相分割掩码的形式。据他们所知,目前的文献缺乏足够的分段钢显微组织图像用于该训练。因此,他们在这项研究中的第二个贡献是开发了一个基于卷积神经网络的框架,该框架可生成足够的地面实况,从而有助于提出的分段网络训练。

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