School of Science and Engineering, Centre for Medical Engineering and Technology, University of Dundee, Dundee DD1 4HN, UK.
School of Medicine, Centre for Medical Engineering and Technology, University of Dundee, Dundee DD1 9SY, UK.
Sensors (Basel). 2023 Feb 23;23(5):2469. doi: 10.3390/s23052469.
Fiber-bundle endomicroscopy has several recognized drawbacks, the most prominent being the honeycomb effect. We developed a multi-frame super-resolution algorithm exploiting bundle rotation to extract features and reconstruct underlying tissue. Simulated data was used with rotated fiber-bundle masks to create multi-frame stacks to train the model. Super-resolved images are numerically analyzed, which demonstrates that the algorithm can restore images with high quality. The mean structural similarity index measurement (SSIM) improved by a factor of 1.97 compared with linear interpolation. The model was trained using images taken from a single prostate slide, 1343 images were used for training, 336 for validation, and 420 for testing. The model had no prior information about the test images, adding to the robustness of the system. Image reconstruction was completed in 0.03 s for 256 × 256 images indicating future real-time performance is within reach. The combination of fiber bundle rotation and multi-frame image enhancement through machine learning has not been utilized before in an experimental setting but could provide a much-needed improvement to image resolution in practice.
纤维束内窥技术有几个公认的缺点,最突出的是蜂窝效应。我们开发了一种多帧超分辨率算法,利用束旋转来提取特征并重建底层组织。使用旋转的纤维束掩模创建多帧堆栈来训练模型,使用模拟数据。对超分辨率图像进行数值分析,结果表明该算法可以高质量地恢复图像。与线性插值相比,平均结构相似性指数测量(SSIM)提高了 1.97 倍。该模型使用来自单个前列腺幻灯片的图像进行训练,共使用了 1343 张图像进行训练,336 张图像用于验证,420 张图像用于测试。该模型对测试图像没有先验信息,这增加了系统的稳健性。对于 256×256 像素的图像,图像重建仅需 0.03 秒,表明未来实时性能是可以实现的。在实验设置中,以前没有使用过纤维束旋转和通过机器学习进行多帧图像增强的组合,但它可以为实际应用中的图像分辨率提供急需的改进。