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Deep-learning-based pyramid-transformer for localized porosity analysis of hot-press sintered ceramic paste

分割 人工智能 材料科学 陶瓷 增采样 计算机科学 扫描电子显微镜 尺度空间分割 图像分割 多孔性 模式识别(心理学) 计算机视觉 复合材料 图像(数学)
作者
Zhongyi Xia,Boqi Wu,Chia-Tai Chan,Tianzhao Wu,Man Zhou,Ling Bing Kong
出处
期刊:PLOS ONE [Public Library of Science]
卷期号:19 (9): e0306385-e0306385 被引量:7
标识
DOI:10.1371/journal.pone.0306385
摘要

Scanning Electron Microscope (SEM) is a crucial tool for studying microstructures of ceramic materials. However, the current practice heavily relies on manual efforts to extract porosity from SEM images. To address this issue, we propose PSTNet (Pyramid Segmentation Transformer Net) for grain and pore segmentation in SEM images, which merges multi-scale feature maps through operations like recombination and upsampling to predict and generate segmentation maps. These maps are used to predict the corresponding porosity at ceramic grain boundaries. To increase segmentation accuracy and minimize loss, we employ several strategies. (1) We train the micro-pore detection and segmentation model using publicly available Al 2 O 3 and custom Y 2 O 3 ceramic SEM images. We calculate the pixel percentage of segmented pores in SEM images to determine the surface porosity at the corresponding locations. (2) Utilizing high-temperature hot pressing sintering, we prepared and captured scanning electron microscope images of Y 2 O 3 ceramics, with which a Y 2 O 3 ceramic dataset was constructed through preprocessing and annotation. (3) We employed segmentation penalty cross-entropy loss, smooth L1 loss, and structural similarity (SSIM) loss as the constituent terms of a joint loss function. The segmentation penalty cross-entropy loss helps suppress segmentation loss bias, smooth L1 loss is utilized to reduce noise in images, and incorporating structural similarity into the loss function computation guides the model to better learn structural features of images, significantly improving the accuracy and robustness of semantic segmentation. (4) In the decoder stage, we utilized an improved version of the multi-head attention mechanism (MHA) for feature fusion, leading to a significant enhancement in model performance. Our model training is based on publicly available laser-sintered Al 2 O 3 ceramic datasets and self-made high-temperature hot-pressed sintered Y 2 O 3 ceramic datasets, and validation has been completed. Our Pix Acc score improves over the baseline by 12.2%, 86.52 vs. 76.01, and the mIoU score improves from by 25.5%, 69.10 vs. 51.49. The average relative errors on datasets Y 2 O 3 and Al 2 O 3 were 6.9% and 6.36%, respectively.
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