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基于深度学习的材料微观图像自动修复。

Deep learning-based automatic inpainting for material microscopic images.

机构信息

Beijing Advanced Innovation Center for Materials Genome Engineering, University of Science and Technology Beijing, Beijing, China.

Beijing Key Laboratory of Knowledge Engineering for Materials Science, University of Science and Technology Beijing, Beijing, China.

出版信息

J Microsc. 2021 Mar;281(3):177-189. doi: 10.1111/jmi.12960. Epub 2020 Sep 28.

DOI:10.1111/jmi.12960
PMID:32901937
Abstract

The microscopic image is important data for recording the microstructure information of materials. Researchers usually use image-processing algorithms to extract material features from that and then characterise the material microstructure. However, the microscopic images obtained by a microscope often have random damaged regions, which will cause the loss of information and thus inevitably influence the accuracy of microstructural characterisation, even lead to a wrong result. To handle this problem, we provide a deep learning-based fully automatic method for detecting and inpainting damaged regions in material microscopic images, which can automatically inpaint damaged regions with different positions and shapes, as well as we also use a data augmentation method to improve the performance of inpainting model. We evaluate our method on Al-La alloy microscopic images, which indicates that our method can achieve promising performance on inpainted and material microstructure characterisation results compared to other image inpainting software for both accuracy and time consumption. LAY DESCRIPTION: A basic goal of materials data analysis is to extract useful information from materials datasets that can in turn be used to establish connections along the composition-processing-structure-properties chain. The microscopic images obtained by a microscope is the key carrier of material microstructural information. Researchers usually use image analysis algorithms to extract regions of interest or useful features from microscopic images, aiming to analyse material microstructure, organ tissues or device quality etc. Therefore, the integrity and clarity of the microscopic image are the most important attributes for image feature extraction. Scientists and engineers have been trying to develop various technologies to obtain perfect microscopic images. However, in practice, some extrinsic defects are often introduced during the preparation and/or shooting processes, and the elimination of these defects often requires mass efforts and cost, or even is impossible at present. Take the microstructure image of metallic material for example, samples prepared to microstructure characterisation often need to go through several steps such as cutting, grinding with sandpaper, polishing, etching, and cleaning. During the grinding and polishing process, defects such as scratches could be introduced. During the etching and cleaning process, some defects such as rust caused by substandard etching, stains etc. may arise and be persisted. These defects can be treated as damaged regions with nonfixed positions, different sizes, and random shapes, resulting in the loss of information, which seriously affects subsequent visual observation and microstructural feature extraction. To handle this problem, we provide a deep learning-based fully automatic method for detecting and inpainting damaged regions in material microscopic images, which can automatically inpaint damaged regions with different positions and shapes, as well as we also use a data augmentation method to improve the performance of inpainting model. We evaluate our method on Al-La alloy microscopic images, which indicates that our method can achieve promising performance on inpainted and material microstructure characterisation results compared to other image inpainting software for both accuracy and time consumption.

摘要

微观图像是记录材料微观结构信息的重要数据。研究人员通常使用图像处理算法从这些图像中提取材料特征,然后对材料微观结构进行特征描述。然而,显微镜获得的微观图像通常存在随机的损坏区域,这将导致信息丢失,从而不可避免地影响微观结构特征描述的准确性,甚至导致错误的结果。为了解决这个问题,我们提供了一种基于深度学习的全自动方法,用于检测和修复材料微观图像中的损坏区域,可以自动修复不同位置和形状的损坏区域,我们还使用了数据增强方法来提高修复模型的性能。我们在 Al-La 合金微观图像上评估了我们的方法,结果表明,与其他图像修复软件相比,我们的方法在修复和材料微观结构特征描述结果方面具有更好的性能,无论是在准确性还是时间消耗方面。

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