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首页> 外文期刊>Journal of mathematical imaging and vision >Generalized gaussian scale-space axiomatics comprising linear scale-space, affine scale-space and spatio-temporal scale-space
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Generalized gaussian scale-space axiomatics comprising linear scale-space, affine scale-space and spatio-temporal scale-space

机译:包含线性尺度空间,仿射尺度空间和时空尺度空间的广义高斯尺度空间公理学

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This paper describes a generalized axiomatic scale-space theory that makes it possible to derive the notions of linear scale-space, affine Gaussian scale-space and linear spatio-temporal scale-space using a similar set of assumptions (scale-space axioms). The notion of non-enhancement of local extrema is generalized from previous application over discrete and rotationally symmetric kernels to continuous and more general non-isotropic kernels over both spatial and spatio-temporal image domains. It is shown how a complete classification can be given of the linear (Gaussian) scale-space concepts that satisfy these conditions on isotropic spatial, non-isotropic spatial and spatio-temporal domains, which results in a general taxonomy of Gaussian scale-spaces for continuous image data. The resulting theory allows filter shapes to be tuned from specific context information and provides a theoretical foundation for the recently exploited mechanisms of shape adaptation and velocity adaptation, with highly useful applications in computer vision. It is also shown how time-causal spatio-temporal scale-spaces can be derived from similar assumptions. The mathematical structure of these scale-spaces is analyzed in detail concerning transformation properties over space and time, the temporal cascade structure they satisfy over time as well as properties of the resulting multi-scale spatio-temporal derivative operators. It is also shown how temporal derivatives with respect to transformed time can be defined, leading to the formulation of a novel analogue of scale normalized derivatives for time-causal scale-spaces. The kernels generated from these two types of theories have interesting relations to biological vision. We show how filter kernels generated from the Gaussian spatio-temporal scale-space as well as the time-causal spatio-temporal scale-space relate to spatio-temporal receptive field profiles registered from mammalian vision. Specifically, we show that there are close analogies to space-time separable cells in the LGN as well as to both space-time separable and non-separable cells in the striate cortex. We do also present a set of plausible models for complex cells using extended quasi-quadrature measures expressed in terms of scale normalized spatio-temporal derivatives. The theories presented as well as their relations to biological vision show that it is possible to describe a general set of Gaussian and/or time-causal scale-spaces using a unified framework, which generalizes and complements previously presented scale-space formulations in this area.
机译:本文介绍了一种广义公理尺度空间理论,该理论使得可以使用一组类似的假设(尺度空间公理)来推导线性尺度空间,仿射高斯尺度空间和线性时空尺度空间的概念。不增强局部极值的概念从先前在离散和旋转对称核上的应用推广到空间和时空图像域上的连续且更通用的非各向同性核。它显示了如何在各向同性空间,非各向同性空间和时空域上给出满足这些条件的线性(高斯)尺度空间概念的完整分类,从而得出高斯尺度空间的一般分类法。连续图像数据。由此产生的理论使滤波器的形状可以从特定的上下文信息中进行调整,并为最近开发的形状适应和速度适应机制提供了理论基础,在计算机视觉中具有非常有用的应用。还显示了如何从类似的假设中得出时间因果时空尺度空间。详细分析了这些尺度空间的数学结构,涉及到空间和时间上的变换特性,它们随时间推移所满足的时间级联结构以及所得的多尺度时空导数运算符的特性。还显示了如何定义相对于转换时间的时间导数,从而为时间因果尺度空间建立了尺度归一化导数的新型类似物。从这两种类型的理论中产生的内核与生物视觉有着有趣的关系。我们展示了如何从高斯时空尺度空间以及时间因果时空尺度空间生成的滤波核与从哺乳动物视觉记录的时空感受野相联系。具体而言,我们表明,与LGN中的时空可分离细胞以及纹状皮层中的时空可分离细胞和不可分离细胞都有相似的相似性。我们的确也提出了一套复杂的细胞模型,该模型使用扩展的准正交度量来表示,该度量以尺度归一化的时空导数表示。提出的理论及其与生物视觉的关系表明,可以使用统一的框架描述通用的高斯和/或因果尺度空间集,该框架概括并补充了该领域先前提出的尺度空间公式。

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