In photoacoustic tomography (PAT) with flat sensor, we routinely encounter two types of limited data. The first is due to using a finite sensor and is especially perceptible if the region of interest is large relatively to the sensor or located farther away from the sensor. In this paper, we focus on the second type caused by a varying sensitivity of the sensor to the incoming wavefront direction which can be modelled as binary i.e. by a cone of sensitivity. Such visibility conditions result, in Fourier domain, in a restriction of both the image and the data to a bowtie, akin to the one corresponding to the range of the forward operator. The visible ranges, in image and data domains, are related by the wavefront direction mapping. We adapt the wedge restricted Curvelet decomposition, we previously proposed for the representation of the full PAT data, to separate the visible and invisible wavefronts in the image. We optimally combine fast approximate operators with tailored deep neural network architectures into efficient learned reconstruction methods which perform reconstruction of the visible coefficients and the invisible coefficients are learned from a training set of similar data.
翻译:在光声感应仪中,我们通常会遇到两种类型的有限数据,第一类是由于使用有限的传感器,第一种是因为感应器比感应器大,或距离感应器更远,因此特别容易看到。在本文中,我们侧重于第二类,其原因是感应器对即将到来的波前方向的敏感度不同,这种感应器可以模拟成二进制,即感应脉冲。在Fourier域,这种可见性条件导致图像和数据被限制在与远端操作器范围相近的弓领上。图像和数据领域的可见范围与波前方方向绘图有关。我们调整了Wedge限制曲线的分解位置,我们以前曾提议对全波前方向数据进行表述,以便将图像中的可见和无形波头分别出来。我们最理想地将快速近近似的操作器与定制的深神经网络结构合并为高效的学习重建方法,进行可见系数的重建,从类似数据的培训中学习了无形系数。