Integral Invariants for Shape Matching

S. Manay;D. Cremers;Byung-Woo Hong;A.J. Yezzi;S. Soatto
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引用次数: 270

Abstract

For shapes represented as closed planar contours, we introduce a class of functionals which are invariant with respect to the Euclidean group and which are obtained by performing integral operations. While such integral invariants enjoy some of the desirable properties of their differential counterparts, such as locality of computation (which allows matching under occlusions) and uniqueness of representation (asymptotically), they do not exhibit the noise sensitivity associated with differential quantities and, therefore, do not require presmoothing of the input shape. Our formulation allows the analysis of shapes at multiple scales. Based on integral invariants, we define a notion of distance between shapes. The proposed distance measure can be computed efficiently and allows warping the shape boundaries onto each other; its computation results in optimal point correspondence as an intermediate step. Numerical results on shape matching demonstrate that this framework can match shapes despite the deformation of subparts, missing parts and noise. As a quantitative analysis, we report matching scores for shape retrieval from a database.
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形状匹配的积分不变量
对于表示为闭合平面轮廓的形状,我们引入了一类关于欧几里得群不变的泛函,这些泛函是通过执行积分运算获得的。虽然这种积分不变量具有其微分对应物的一些理想性质,如计算的局部性(允许在遮挡下匹配)和表示的唯一性(渐近),但它们不表现出与微分量相关的噪声敏感性,因此不需要对输入形状进行预平滑。我们的公式允许在多个尺度上分析形状。基于积分不变量,我们定义了形状之间距离的概念。所提出的距离测量可以有效地计算,并且允许将形状边界扭曲到彼此上;其计算结果是作为中间步骤的最佳点对应。形状匹配的数值结果表明,该框架可以在不考虑子零件变形、零件缺失和噪声的情况下匹配形状。作为定量分析,我们从数据库中报告形状检索的匹配分数。
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