Stretched sinograms for limited-angle tomographic reconstruction with neural networks
This is an incremental improvement for researchers in computational imaging, specifically in electron microscopy.
The paper tackles limited-angle tomographic reconstruction by introducing a method that stretches tilt views before feeding them into a 2-D U-Net, resulting in significantly better reconstructions with lower mean squared error compared to baseline methods.
We present a direct method for limited angle tomographic reconstruction using convolutional networks. The key to our method is to first stretch every tilt view in the direction perpendicular to the tilt axis by the secant of the tilt angle. These stretched views are then fed into a 2-D U-Net which directly outputs the 3-D reconstruction. We train our networks by minimizing the mean squared error between the network's generated reconstruction and a ground truth 3-D volume. To demonstrate and evaluate our method, we synthesize tilt views from a 3-D image of fly brain tissue acquired with Focused Ion Beam Scanning Electron Microscopy. We compare our method to using a U-Net to directly reconstruct the unstretched tilt views and show that this simple stretching procedure leads to significantly better reconstructions. We also compare to using a network to clean up reconstructions generated by backprojection and filtered backprojection, and find that this simple stretching procedure also gives lower mean squared error on previously unseen images.