论文标题
使用局部傅里叶蛋白描述尺寸的直方图对2D形状的欧几里得不变性识别
Euclidean Invariant Recognition of 2D Shapes Using Histograms of Magnitudes of Local Fourier-Mellin Descriptors
论文作者
论文摘要
由于内部产物具有基础功能的大小是旋转和比例变化的不变性,因此傅立叶蛋白变换长期以来一直用作欧几里得不变2D形状识别系统的组成部分。然而,傅里叶蛋白变换的幅度仅是旋转的不变,并且在已知中心点上的尺度变化,并且不可能进行全欧几里得形状识别,除非可以始终如一,准确地识别此中心点。在本文中,我们描述了一个系统,该系统在图像中的每个点都计算出傅立叶蛋白变换。傅立叶基蛋白基函数的空间支持是通过将它们乘以多项式包络来局部的。值得注意的是,在隔离点上使用这些复杂过滤器的卷积的大小(本身)并非用作欧几里得不变形状识别的特征,因为可靠的歧视需要具有足够大的空间支撑的过滤器,足以完全包含形状。取而代之的是,我们依赖于幅度的归一化直方图是完全欧几里得的。我们演示了一个基于VLAD机器学习方法的系统,该系统对2D形状进行欧几里得不变识别,并且比基于卷积神经网络的可比方法要少的训练数据较小的训练数据。
Because the magnitude of inner products with its basis functions are invariant to rotation and scale change, the Fourier-Mellin transform has long been used as a component in Euclidean invariant 2D shape recognition systems. Yet Fourier-Mellin transform magnitudes are only invariant to rotation and scale changes about a known center point, and full Euclidean invariant shape recognition is not possible except when this center point can be consistently and accurately identified. In this paper, we describe a system where a Fourier-Mellin transform is computed at every point in the image. The spatial support of the Fourier-Mellin basis functions is made local by multiplying them with a polynomial envelope. Significantly, the magnitudes of convolutions with these complex filters at isolated points are not (by themselves) used as features for Euclidean invariant shape recognition because reliable discrimination would require filters with spatial support large enough to fully encompass the shapes. Instead, we rely on the fact that normalized histograms of magnitudes are fully Euclidean invariant. We demonstrate a system based on the VLAD machine learning method that performs Euclidean invariant recognition of 2D shapes and requires an order of magnitude less training data than comparable methods based on convolutional neural networks.