2D-affine invariants that distribute uniformly and can be tuned to any convex feature domain

I. Rigoutsos
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引用次数: 1

Abstract

We derive and discuss a set of parametric equations which, when given a convex 2D feature domain, K, will generate affine invariants with the property that the invariants' values are uniformly distributed in the region [0,1]/spl times/[0,1]. Definition of the shape of the convex domain K allows computation of the parameters' values and thus the proposed scheme can be tuned to a specific feature domain. The features of all recognizable objects (models) are assumed to be two-dimensional points and uniformly distributed over K. The scheme leads to improved discrimination power, improved computational-load and storage-load balancing and can also be used to determine and identify biases in the database of recognizable models (over-represented constructs of object points). Obvious enhancements produce rigid-transformation and similarity-transformation invariants with the same good distribution properties, making this approach generally applicable. An extension to the case of affine invariants for feature points in three-dimensional space, with the invariants now being uniformly distributed in the region [0,1]/spl times/[0,1]/spl times/[0,1], has also been carried out and is discussed briefly. We present results for several 2D convex domains using both synthetic data and real databases.
均匀分布的二维仿射不变量,可以调整到任何凸特征域
我们推导并讨论了一组参数方程,当给定一个凸二维特征域K时,这些参数方程将产生仿射不变量,其不变量的值均匀分布在[0,1]/ sp1次/[0,1]区域内。凸域K形状的定义允许参数值的计算,因此所提出的方案可以调整到特定的特征域。所有可识别对象(模型)的特征都假定为二维点,并均匀分布在k上。该方案提高了识别能力,改善了计算负载和存储负载平衡,也可用于确定和识别可识别模型数据库中的偏差(对象点的过度表征构造)。明显的增强产生具有相同良好分布特性的刚性变换和相似变换不变量,使该方法普遍适用。将三维空间中特征点的仿射不变量推广到[0,1]/spl乘/[0,1]/spl乘/[0,1]区域内,并进行了简要讨论。我们使用合成数据和真实数据库给出了几个二维凸域的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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