A Hybrid Image Segmentation Approach for Thermal Barrier Coating Quality Assessments

Zanyah Ailsworth, Wei-bang Chen, Yongjin Lu, Xiaoliang Wang, Melissa Tsui, H. Al-Ghaib, Ben Zimmerman
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引用次数: 3

Abstract

Thermal barrier coating, a widely used advanced manufacturing technique in various industries, provides thermal insulation and surface protection to a substrate by spraying melted coating materials on to the surface of the substrate. As the melted coating materials solidify, it creates microstructures that affect the coating quality. An important coating quality assessment metric that determines its effectiveness is porosity, the quantity of microstructures within the coating. In this article, we aim to build a novel algorithm to determine the microstructures in a thermal barrier coating, which is used to calculate porosity. The hybrid approach combines the efficiency of thresholding-based techniques and the accuracy of convolutional neural network (CNN) based techniques to perform a binary semantic segmentation. We evaluate the performance of the proposed hybrid approach on coating images generated from two different types of coating powders. These images exhibit various texture features. The experimental results show that the proposed hybrid approach outperforms the thresholding-based approach and the CNN-based approach in terms of accuracy on both types of images. In addition, the time complexity of the hybrid approach is also greatly optimized compared to the CNN-based approach.
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热障涂层质量评价的混合图像分割方法
热障涂层是一种广泛应用于各个行业的先进制造技术,它通过将熔化的涂层材料喷涂到基材表面,为基材提供隔热和表面保护。当熔化的涂层材料凝固时,会产生影响涂层质量的微观组织。决定其有效性的一个重要的涂层质量评价指标是孔隙率,即涂层内微结构的数量。在本文中,我们旨在建立一种新的算法来确定热障涂层中的微观结构,并用于计算孔隙率。该混合方法结合了基于阈值技术的效率和基于卷积神经网络(CNN)技术的准确性来执行二值语义分割。我们评估了所提出的混合方法在两种不同类型的涂层粉末生成的涂层图像上的性能。这些图像呈现出不同的纹理特征。实验结果表明,本文提出的混合方法在两类图像上的准确率均优于基于阈值的方法和基于cnn的方法。此外,与基于cnn的方法相比,混合方法的时间复杂度也得到了很大的优化。
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