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Shape Matching by Integral Invariants on Eccentricity Transformed Images

机译:通过偏心变换图像上积分不变量的形状匹配

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Matching occluded and noisy shapes is a frequently encountered problem in vision and medical image analysis and more generally in computer vision. To keep track of changes inside breast, it is important for a computer aided diagnosis system (CAD) to establish correspondences between regions of interest. Shape transformations, computed both with integral invariants and geodesic distance yield signatures that are invariant to isometric deformations, such as bending and articulations. Integral invariants are used on 2D planar shapes to describe the shape boundary. However, they provide no information about where a particular feature on the boundary lies with regard to overall shape structure. On the other hand, eccentricity transforms can be used to match shapes by signatures of geodesic distance histograms based on information from inside the shape; but they ignore the boundary information. We describe a method that combines both the boundary signature of shape obtained from integral invariants and structural information from the eccentricity transform to yield improved results.
机译:匹配遮挡和嘈杂的形状是视觉和医学图像分析中经常遇到的问题,更常见于计算机视觉。为了跟踪乳房内部的变化,计算机辅助诊断系统(CAD)非常重要,以建立感兴趣区域之间的对应关系。形状转换,通过不变的不变性和测距距离产生的变形变换,这些距离与等距变形不变,例如弯曲和铰接。 Integral Invariants用于2D平面形状以描述形状边界。然而,它们不提供关于边界上的特定特征在于整体形状结构的信息。另一方面,偏心变换可用于通过基于来自形状内部的信息来匹配地测地距离直方图的形状;但他们忽略了边界信息。我们描述了一种方法,该方法将从偏心变换的整体不变性和结构信息中获得的形状和结构信息相结合,从而产生改进的结果。

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