The hessian of axially symmetric functions on SE(3) and application in 3D image analysis

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Abstract

We propose a method for computation of the Hessian of axially symmetric functions on the roto-translation group SE(3). Eigen decomposition of the resulting Hessian is then used for curvature estimation of tubular structures, similar to how the Hessian matrix of 2D or 3D image data can be used for orientation estimation. This paper focuses on a new implementation of a Gaussian regularized Hessian on the roto-translation group. Furthermore we show how eigenanalysis of this Hessian gives rise to exponential curve fits on data on position and orientation (e.g. orientation scores), whose spatial projections provide local fits in 3D data. We quantitatively validate our exponential curve fits by comparing the curvature of the spatially projected fitted curve to ground truth curvature of artificial 3D data. We also show first results on real MRA data.

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Janssen, M. H. J., Dela Haije, T. C. J., Martin, F. C., Bekkers, E. J., & Duits, R. (2017). The hessian of axially symmetric functions on SE(3) and application in 3D image analysis. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 10302 LNCS, pp. 643–655). Springer Verlag. https://doi.org/10.1007/978-3-319-58771-4_51

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