首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Sparse-plus-dense-RANSAC for estimation of multiple complex curvilinear models in 2D and 3D
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Sparse-plus-dense-RANSAC for estimation of multiple complex curvilinear models in 2D and 3D

机译:稀疏加密集RANSAC用于估计2D和3D中的多个复杂曲线模型

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摘要

The detection of multiple complex structures in noisy, outlier-rich two- and three-dimensional data is a challenging model estimation problem. In this paper, we build on the RANSAC method to select multiple model instances, focusing especially on curve estimation. Estimation of complex curves such as splines has so far received little attention in the context of model estimation, but has primarily been considered as a segmentation problem. Our proposed curve estimation is based on Sparse-Plus-Dense RANSAC, a framework in which estimation is performed on sparse points, guided by dense image data. This approach is extended to complex curvilinear models, in two- and three-dimensional data. The estimation is hierarchical, based on a merging step that uses an intuitive cost function. Results are presented on synthetic and real X-ray data, showing that the proposed approach performs comparably to state-of-the-art multiple model estimation in the synthetic data, while it significantly outperforms state-of-the-art in the real X-ray sequences. It also achieves correct localization of the model endpoints, which is a crucial aspect in the context of the clinical application.
机译:在嘈杂,异常值高的二维和三维数据中检测多个复杂结构是一个具有挑战性的模型估计问题。在本文中,我们基于RANSAC方法选择多个模型实例,尤其着重于曲线估计。到目前为止,在模型估计的背景下,诸如样条曲线之类的复杂曲线的估计很少受到关注,但主要被视为分割问题。我们提出的曲线估计基于稀疏加密集RANSAC,这是一种在稀疏点上进行估计的框架,该稀疏点是在密集图像数据的引导下进行的。该方法扩展到二维和三维数据中的复杂曲线模型。基于使用直观成本函数的合并步骤,估算是分层的。在合成和真实X射线数据上显示了结果,表明所提出的方法与合成数据中的最新模型估计具有可比性,而它在实际X射线中的性能明显优于最新模型-射线序列。它还可以实现模型端点的正确定位,这在临床应用中至关重要。

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