泽尼克多项式
不变(物理)
速度矩
人工智能
数学
尺度不变性
模式识别(心理学)
力矩(物理)
镜像时刻
正交性
算法
计算机视觉
特征提取
图像处理
计算机科学
图像(数学)
几何学
物理
光学
统计
经典力学
波前
数学物理
作者
A. Khotanzad,Yaw Hua Hong
摘要
The problem of rotation-, scale-, and translation-invariant recognition of images is discussed. A set of rotation-invariant features are introduced. They are the magnitudes of a set of orthogonal complex moments of the image known as Zernike moments. Scale and translation invariance are obtained by first normalizing the image with respect to these parameters using its regular geometrical moments. A systematic reconstruction-based method for deciding the highest-order Zernike moments required in a classification problem is developed. The quality of the reconstructed image is examined through its comparison to the original one. The orthogonality property of the Zernike moments, which simplifies the process of image reconstruction, make the suggest feature selection approach practical. Features of each order can also be weighted according to their contribution to the reconstruction process. The superiority of Zernike moment features over regular moments and moment invariants was experimentally verified.< >
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