Model-based Fully Dense UNet for Image Enhancement in Software-defined Optoacoustic Tomography

M. Gonzalez, L. Vega
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Abstract

A deep neural network architecture for improving the performance of a software-defined optoacoustic tomography device is presented. Our approach is a hybrid one, in the sense that a powerful data-driven architecture (a FD-UNet) is combined with a structure that exploits model-guided information, in the form of the forward and adjoint operators of the acoustic problem. Besides that, the findings of a previous work on the noise and other effects on the measured sinograms are also exploited, in order to make the structure more robust in the task of correcting the artifacts that are typically introduced in the reconstructed images. The proposed solution is numerically trained and evaluated. In terms of the average mean square error over the testing data-set, our approach shows better performance than well-established reconstruction algorithms in the field of optoacustic tomography. A series of examples shows that this superior performance also holds with respect to other reconstruction image quality measures.
软件定义光声断层成像中基于模型的全密度UNet图像增强
提出了一种用于提高软件定义光声层析成像设备性能的深度神经网络结构。我们的方法是一种混合方法,在某种意义上,一个强大的数据驱动架构(FD-UNet)与一个利用模型引导信息的结构相结合,以声学问题的前向算子和伴随算子的形式。除此之外,为了使结构在校正重建图像中通常引入的伪影的任务中更加鲁棒,还利用了先前关于噪声和对测量的正弦图的其他影响的研究结果。提出的解决方案进行了数值训练和评估。就测试数据集的平均均方误差而言,我们的方法比光声断层成像领域中成熟的重建算法表现出更好的性能。一系列实例表明,这种优越的性能也适用于其他重建图像质量指标。
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