Introducing Learning Rate Adaptation CMA-ES into Rigid 2D/3D Registration for Robotic Navigation in Spine Surgery
The covariance matrix adaptive evolution strategy (CMA-ES) has been widely used in the field of 2D/3D registration in recent years. This optimization method exhibits exceptional robustness and usability for complex surgical scenarios. However, due to the inherent ill-posed nature of the 2D/3D regist...
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Zusammenfassung: | The covariance matrix adaptive evolution strategy (CMA-ES) has been widely
used in the field of 2D/3D registration in recent years. This optimization
method exhibits exceptional robustness and usability for complex surgical
scenarios. However, due to the inherent ill-posed nature of the 2D/3D
registration task and the presence of numerous local minima in the landscape of
similarity measures. Evolution strategies often require a larger population
size in each generation in each generation to ensure the stability of
registration and the globality and effectiveness of search, which makes the
entire process computationally expensive. In this paper, we build a 2D/3D
registration framework based on a learning rate adaptation CMA-ES manner. The
framework employs a fixed and small population size, leading to minimized
runtime and optimal utilization of computing resources. We conduct experimental
comparisons between the proposed framework and other intensity-based baselines
using a substantial volume of synthetic data. The results suggests that our
method demonstrates superiority in both registration accuracy and running time.
Code is available at github.com/m1nhengChen/CMAES-reg. |
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DOI: | 10.48550/arxiv.2405.10186 |