A Generalizable Framework for Domain-Specific Nonrigid Registration: Application to Cardiac Ultrasound

Jacob J. Peoples, Randy E. Ellis

2020 IEEE 17th International Symposium on Biomedical Imaging (ISBI)(2020)

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摘要
Many applications of nonrigid point set registration could benefit from a domain-specific model of allowed deformations. We observe that registration methods using mixture models optimize a differentiable log-likelihood function and are thus amenable to gradient-based optimization. In theory, this allows optimization of any transformations that are expressed as arbitrarily nested differentiable functions. In practice such optimization problems are readily handled with modern machine learning tools. We demonstrate, in experiments on synthetic data generated from a model of the left cardiac ventricle, that complex nested transformations can be robustly optimized using this approach. As a realistic application, we also use the method to propagate the model through an entire cardiac ultrasound sequence. We conclude that this approach, which works with both points and oriented points, provides an easily generalizable framework in which complex, application-specific transformation models may be constructed and optimized.
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关键词
easily generalizable framework,complex application-specific transformation models,domain-specific nonrigid registration,nonrigid point set registration,domain-specific model,allowed deformations,registration methods,mixture models,differentiable log-likelihood function,arbitrarily nested differentiable functions,modern machine learning tools,synthetic data,left cardiac ventricle,complex nested transformations,realistic application,oriented points,cardiac ultrasound sequence
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