王晨,黄松,陈曦,等. 基于Swin Transformer的航空涡轮叶片DR图像超分辨率重建[J]. 失效分析与预防,2025,20(3):224-234. doi: 10.3969/j.issn.1673-6214.2025.03.008
    引用本文: 王晨,黄松,陈曦,等. 基于Swin Transformer的航空涡轮叶片DR图像超分辨率重建[J]. 失效分析与预防,2025,20(3):224-234. doi: 10.3969/j.issn.1673-6214.2025.03.008
    WANG Chen,HUANG Song,CHEN Xi,et al. Super-resolution reconstruction of DR images of aerospace turbine blades based on Swin Transformer[J]. Failure analysis and prevention,2025,20(3):224-234. doi: 10.3969/j.issn.1673-6214.2025.03.008
    Citation: WANG Chen,HUANG Song,CHEN Xi,et al. Super-resolution reconstruction of DR images of aerospace turbine blades based on Swin Transformer[J]. Failure analysis and prevention,2025,20(3):224-234. doi: 10.3969/j.issn.1673-6214.2025.03.008

    基于Swin Transformer的航空涡轮叶片DR图像超分辨率重建

    Super-resolution Reconstruction of DR Images of Aerospace Turbine Blades Based on Swin Transformer

    • 摘要: 航空涡轮叶片气膜孔周的微裂纹是叶片失效的主要原因之一。针对现有微裂纹数字射线成像检测技术中超分辨模型重建图像存在伪影和边缘锯齿、重建精度难以有效显示1 mm以下裂纹的问题,本研究建立了一种基于窗口变换的自注意力网络的数字射线图像超分辨重建算法(SwinDR)。算法包含浅层特征提取、深层特征提取和上采样重建3个模块,在网络训练时对生成图像进行感知损失和L1损失约束。与增强的深度超分辨率网络、基于注意力机制的超分辨率重建技术和基于Swin Transformer的图像修复模型算法进行叶片气膜孔周微裂纹DR图像重建对比,在2倍放大时,SwinDR的测试DR图像平均峰值信噪比(PSNR)为39.724,平均结构相似性(SSIM)为0.947。在4倍放大时,PSNR为39.231,SSIM为0.933。对裂纹尺寸进行测量,发现最小重建裂纹长度为0.452 mm,宽度为0.031 mm。结果表明,所提出的SwinDR算法在重建图像方面表现出较小的变形和更高的对比度,显著减少了边缘锯齿和模糊现象,有效恢复了图像的高频细节,提高了重建图像的清晰度。

       

      Abstract: Microcracks near air-film pores on aviation turbine blades are a primary cause of blade failure. Current digital radiographic (DR) imaging techniques for detecting such microcracks encounter limitations, including artifacts, jagged edge in reconstructed images, and insufficient resolution to reliably resolve cracks smaller than 1 mm. A super-resolution reconstruction algorithm for digital radiographic images based on window transformation and self-attention network (SwinDR) has been established. The algorithm comprises three modules: shallow feature extraction, deep feature extraction, and upsampling reconstruction. During network training, perceptual loss and L1 loss constraints are employed to optimize image generation. Compared with existing methods that including the Enhanced Deep Super-resolution Network (EDSR), Residual Channel Attention Network (RCAN), and Swin Transformer-based image restoration model (SwinIR), the SwinDR algorithm exhibits superior performance. At 2x magnification, SwinDR-reconstructed DR images achieved an average peak signal-to-noise ratio (PSNR) of 39.724, and a structural similarity index measure (SSIM) of 0.947. At 4x magnification, the PSNR and SSIM values were 39.231 and 0.933, respectively. Reconstructed cracks measured as small as 0.452 mm in length and 0.031 mm in width. Results indicate that SwinDR effectively minimizes deformation and edge artifacts, enhances image contrast, restores the high-frequency details, and significantly improves reconstructed image clarity compared to conventional approaches.

       

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