We present a highly parallel method for accurate and efficient variational deformable 3D image registration on a consumer-grade graphics processing unit (GPU). We build on recent matrix-free variational approaches and specialize the concepts to the massively-parallel manycore architecture provided by the GPU. Compared to a parallel and optimized CPU implementation, this allows us to achieve an average speedup of 32.53 on 986 real-world CT thorax-abdomen follow-up scans. At a resolution of approximately 2563 voxels, the average runtime is 1.99 seconds for the full registration. On the publicly available DIR-lab benchmark, our method ranks third with respect to average landmark error at an average runtime of 0.32 seconds.
CITATION STYLE
Budelmann, D., König, L., Papenberg, N., & Lellmann, J. (2019). Fully-Deformable 3D Image Registration in Two Seconds. In Informatik aktuell (pp. 302–307). Springer Berlin Heidelberg. https://doi.org/10.1007/978-3-658-25326-4_67
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