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Automated and Refined Application of Convolutional Neural Network Modeling to Metallic Powder Particle Satellite Detection

机译:卷积神经网络建模对金属粉末颗粒卫星检测的自动化和精制应用

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Research concerned with the identification as well as quantification of satellites found within metallic powders has recently demonstrated the promise of implementing Mask R-CNNs, instance segmentation, and transfer learning. Though the original research and development of such an approach demonstrated the functionality of the data-driven image analysis framework, questions remained in regards to the scale-ability of the Mask R-CNN-based model. Accordingly, the present work demonstrates the fact that the originally formulated model can be expanded to include scanning electron micrographs to various powder types at variate magnifications (rather than the original case of micrographs of a single powder type at a single magnification). Moreover, the present work establishes a process that enables users to specifically target which images will have most impact on increasing generalize-ability and performance in order to optimize maximum improvement of the model with the least amount of images annotated. Beyond this, we also outline a method of auto-labeling satellites in images by using a trained model to increase its own training set size.
机译:鉴定的研究以及金属粉末中发现的卫星定量最近已经证明了实施面具R-CNN,实例分割和转移学习的承诺。虽然这种方法的原始研究和开发证明了数据驱动图像分析框架的功能,但关于基于掩模R-CNN的模型的尺度能力仍然存在问题。因此,本工作证明了最初配制的模型可以扩展以包括在变化的放大倍数下扫描电子显微照片(而不是单个放大倍率的单个粉末类型的显微照片的原始情况)。此外,本工作建立了一个过程,使用户能够专门针对哪些图像对增加的概念能力和性能产生最大的影响,以便优化具有少量图像的模型的最大改善。除此之外,我们还通过使用训练有素的模型来概述一种自动标记卫星的方法,以增加自己的训练集大小。

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