Wear particles image enhancement using long short-term memory 3D recurrent reconstruction neural network (LSTM 3D-R2N2)

IF 1.8 4区 工程技术 Q3 ENGINEERING, MECHANICAL
Yinhu Xi, Haohao Zhang, Bo Li
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引用次数: 0

Abstract

3D modeling of wear particles has proven to be a useful tool for monitoring mechanical failure conditions. In this work, a new method for 3D reconstruction of wear particles in uncontaminated oil (healthy oil) and contaminated oil (used oil) was proposed. The image acquisition device can capture multi-view images of moving wear particles in both healthy and used oil by using the reflected light. The images were pretreated first, and the image color inversion was conducted using the Pillow library. The pretreated wear particle images were used for 3D reconstruction using long short-term memory 3D recurrent reconstruction neural network. The current results were verified against existing results, and good agreement can be found. It can be concluded that we can reconstruct the similar 3D wear particle results with fewer images by comparison with other methods. Specifically, only 4–6 image samples were used for the 3D reconstruction of wear particles, and at least 8 image samples were needed for other existing reports.
利用长短期记忆三维重建神经网络(LSTM 3D-R2N2 )增强磨损颗粒图像效果
磨损颗粒的三维建模已被证明是监测机械故障条件的有用工具。在这项工作中,提出了一种用于未受污染的油(健康油)和受污染的油(废油)中磨损颗粒三维重建的新方法。图像采集设备可利用反射光捕捉健康油和废油中移动磨损颗粒的多视角图像。首先对图像进行预处理,然后使用 Pillow 库进行图像颜色反转。预处理后的磨损颗粒图像使用长短期记忆三维重建神经网络进行三维重建。将当前结果与现有结果进行了验证,结果一致。可以得出的结论是,与其他方法相比,我们可以用较少的图像重建类似的磨损颗粒三维结果。具体来说,磨损颗粒的三维重建只使用了 4-6 个图像样本,而其他现有报告至少需要 8 个图像样本。
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来源期刊
CiteScore
3.80
自引率
10.00%
发文量
625
审稿时长
4.3 months
期刊介绍: The Journal of Mechanical Engineering Science advances the understanding of both the fundamentals of engineering science and its application to the solution of challenges and problems in engineering.
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