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Advanced modeling of visual information processing: A multi-resolution directional-oriented image transform based on Gaussian derivatives

机译:视觉信息处理的高级建模:基于高斯导数的多分辨率定向图像变换

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In this work, a multi-channel model for image representation is derived based on the scale-space theory. This model is inspired in biological insights and includes some important properties of human vision such as the Gaussian derivative model for early vision proposed by Young [The Gaussian derivative theory of spatial vision: analysis of cortical cell receptive field line-weighting profiles, General Motors Res. Labs. Rep. 4920, 1986]. The image transform that we propose in this work uses analysis operators similar to those of the Hermite transform at multiple' scales, but the synthesis scheme of our approach integrates the responses of all channels at different scales. The advantages of this scheme are: (1) Both analysis and synthesis operators are Gaussian derivatives. This allows for simplicity during implementation. (2) The operator functions possess better space-frequency localization, and it is possible to separate adjacent scales one octave apart, according to Wilson's results on human vision channels. [H.R. Wilson, J.R. Bergen, A four mechanism model for spatial vision. Vision Res. 19 (1979) 19-32). (3) In the case of two-dimensional (2-D) signals, it is easy to analyze local orientations at different scales. A discrete approximation is also derived from an asymptotic relation between the Gaussian derivatives and the discrete binomial filters. We show in this work how the proposed transform can be applied to the problems of image coding, noise reduction and image fusion. Practical considerations are also of concern.
机译:在这项工作中,基于比例空间理论导出了用于图像表示的多通道模型。该模型的灵感来自生物学见解,并包括人类视觉的一些重要属性,例如Young提出的早期视觉的高斯导数模型[空间视觉的高斯导数理论:皮层细胞接受野线权重分析,通用汽车研究。实验室。 Rep。4920,1986]。我们在这项工作中提出的图像变换使用的分析运算符与Hermite变换的分析运算符在多个尺度上相似,但是我们的方法的综合方案整合了不同尺度下所有通道的响应。该方案的优点是:(1)分析和综合算子都是高斯导数。这样可以简化实施过程。 (2)根据威尔逊在人类视觉通道上的结果,算子功能具有更好的空频定位能力,并且可以将相邻的音阶分开一个八度。 [H.R.威尔逊(Wilson,J.R. Bergen),《空间视觉的四种机理模型》。视觉资源。 19(1979)19-32)。 (3)在二维(2-D)信号的情况下,很容易分析不同比例的局部方向。高斯导数和离散二项式滤波器之间的渐近关系也可以得到离散近似。我们在这项工作中展示了如何将提出的变换应用于图像编码,降噪和图像融合的问题。实际考虑也值得关注。

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