磁等值线示踪

C. M. Orange, F. Groen
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引用次数: 1

摘要

针对未知图像的分割,提出了一种交互式图像目标边界描述工具。它感觉像一个徒手绘图工具,但根据与图像对象边界形成的语义相关的约束进行操作。我们通过将用户数据解释为对象边界的近似值来找到用户跟踪的路径。由此,我们导出了可能是边界一部分的8连通路径集。为了选择最佳路径,我们根据用户数据和图像数据(例如梯度幅度)设计了一个代价函数,并使用动态规划算法选择最小代价路径。生成一条平滑路径,在低对比度区域跟随用户,而在其他区域跟随对象边界。描述了针对特定条件调整工具的方法。我们给出了使用随机数据模拟用户的定量结果和在真实图像中跟踪真实用户的定性结果
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Magnetic contour tracing
We present an interactive tool for image object boundary specification for the segmentation of unknown images. It feels like a freehand drawing tool, but behaves according to constraints related to the semantics of image object boundary formation. We find the path as the user traces by interpreting the user data as an approximation to the object boundary. From this, we derive the set of 8-connected paths which may be part of the boundary. To select the best path, we design a cost function in terms of the user data and the image data (e.g. gradient magnitude), and select a minimum cost path using a dynamic programming algorithm. A smooth path is produced that follows the user in low contrast regions and the object boundary otherwise. A method to tune the tool for specific conditions is described. We present quantitative results obtained for a simulated user using random data and qualitative results for a real user tracing in real images.<>
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Extracting spatio-temporal patterns from geoscience datasets Magnetic contour tracing Exploring feature detection techniques for time-varying volumetric data Nonlinear models for representation, compression, and visualization of fluid flow images and velocimetry data A Markov random fields model for describing unhomogeneous textures: generalized random stereograms
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