Abstract

The nonrigid registration algorithm based on B-spline Free-Form Deformation (FFD) plays a key role and is widely applied in medical image processing due to the good flexibility and robustness. However, it requires a tremendous amount of computing time to obtain more accurate registration results especially for a large amount of medical image data. To address the issue, a parallel nonrigid registration algorithm based on B-spline is proposed in this paper. First, the Logarithm Squared Difference (LSD) is considered as the similarity metric in the B-spline registration algorithm to improve registration precision. After that, we create a parallel computing strategy and lookup tables (LUTs) to reduce the complexity of the B-spline registration algorithm. As a result, the computing time of three time-consuming steps including B-splines interpolation, LSD computation, and the analytic gradient computation of LSD, is efficiently reduced, for the B-spline registration algorithm employs the Nonlinear Conjugate Gradient (NCG) optimization method. Experimental results of registration quality and execution efficiency on the large amount of medical images show that our algorithm achieves a better registration accuracy in terms of the differences between the best deformation fields and ground truth and a speedup of 17 times over the single-threaded CPU implementation due to the powerful parallel computing ability of Graphics Processing Unit (GPU).

Highlights

  • Image registration is a process used in medical image analysis to determine a spatial transformation that aligns image data according to the spatial coordinate of pixels

  • Aiming to improve the accuracy and significantly accelerate B-spline registration algorithm, we develop a B-splinebased nonrigid registration algorithm that is suitable for executing on Graphics Processing Unit (GPU) by considering the Logarithm Squared Difference (LSD) as similarity metric

  • Three time-consuming steps including B-splines interpolation, the similarity metric LSD, and its gradient computation are designed in the form of the kernel functions which are executed in parallel on GPU

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Summary

A Parallel Nonrigid Registration Algorithm Based on B-Spline for Medical Images

The nonrigid registration algorithm based on B-spline Free-Form Deformation (FFD) plays a key role and is widely applied in medical image processing due to the good flexibility and robustness. It requires a tremendous amount of computing time to obtain more accurate registration results especially for a large amount of medical image data. Experimental results of registration quality and execution efficiency on the large amount of medical images show that our algorithm achieves a better registration accuracy in terms of the differences between the best deformation fields and ground truth and a speedup of 17 times over the single-threaded CPU implementation due to the powerful parallel computing ability of Graphics Processing Unit (GPU)

Introduction
Related Work
Our Algorithm
NxNyNz
Parallel Accelerating Procedure for Our Algorithm
Experiment Results and Discussion
32 GB Tesla K20m
Conclusion
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