4.4 Article

Automatic recognition of defects in plasma-facing material using image processing technology

期刊

PLASMA SCIENCE & TECHNOLOGY
卷 25, 期 12, 页码 -

出版社

IOP Publishing Ltd
DOI: 10.1088/2058-6272/ace9af

关键词

image processing; automatic defect analysis; object detection; convolutional neural network

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This paper presents a method for the automatic recognition of bubbles in transmission electron microscope (TEM) images of W nanofibers using image processing techniques and convolutional neural network (CNN). The proposed method outperforms traditional neural network models and demonstrates human-like performance in recognizing bubbles in both clear and blurred TEM images. It contributes to the development of quantitative image analysis in the field of plasma-material interactions.
Observing and analyzing surface images is critical for studying the interaction between plasma and irradiated plasma-facing materials. This paper presents a method for the automatic recognition of bubbles in transmission electron microscope (TEM) images of W nanofibers using image processing techniques and convolutional neural network (CNN). We employ a three-stage approach consisting of Otsu, local-threshold, and watershed segmentation to extract bubbles from noisy images. To address over-segmentation, we propose a combination of area factor and radial pixel intensity scanning. A CNN is used to recognize bubbles, outperforming traditional neural network models such as AlexNet and GoogleNet with an accuracy of 97.1% and recall of 98.6%. Our method is tested on both clear and blurred TEM images, and demonstrates human-like performance in recognizing bubbles. This work contributes to the development of quantitative image analysis in the field of plasma-material interactions, offering a scalable solution for analyzing material defects. Overall, this study's findings establish the potential for automatic defect recognition and its applications in the assessment of plasma-material interactions. This method can be employed in a variety of specialties, including plasma physics and materials science.

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