Emerging neural reconstruction techniques based on tomography (e.g., NeRF,
NeAT, and NeRP) have started showing unique capabilities in medical imaging. In
this work, we present a novel Polychromatic neural representation (Polyner) to
tackle the challenging problem of CT imaging when metallic implants exist
within the human body. The artifacts arise from the drastic variation of
metal's attenuation coefficients at various energy levels of the X-ray
spectrum, leading to a nonlinear metal effect in CT measurements.
Reconstructing CT images from metal-affected measurements hence poses a
complicated nonlinear inverse problem where empirical models adopted in
previous metal artifact reduction (MAR) approaches lead to signal loss and
strongly aliased reconstructions. Polyner instead models the MAR problem from a
nonlinear inverse problem perspective. Specifically, we first derive a
polychromatic forward model to accurately simulate the nonlinear CT acquisition
process. Then, we incorporate our forward model into the implicit neural
representation to accomplish reconstruction. Lastly, we adopt a regularizer to
preserve the physical properties of the CT images across different energy
levels while effectively constraining the solution space. Our Polyner is an
unsupervised method and does not require any external training data.
Experimenting with multiple datasets shows that our Polyner achieves comparable
or better performance than supervised methods on in-domain datasets while
demonstrating significant performance improvements on out-of-domain datasets.
To the best of our knowledge, our Polyner is the first unsupervised MAR method
that outperforms its supervised counterparts.Comment: 19 page