Neuro-pattern classification of elongated and contracted images

P. Raveendran, Sigeru Omatu, Wan Abu Bakar
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引用次数: 9

Abstract

This paper presents a technique to classify images that have been elongated or contracted. The problem is formulated using conventional regular moments. It is shown that the conventional regular moment-invariants remain no longer invariant when the image is scaled unequally in the x- and y-directions. A method is proposed to form moment-invariants that do not change under such unequal scaling and shifting. By combining moments based on the theory of algebraic invariants, some of the features become rotation invariant. Results of computer simulations for images are also included, verifying the validity of the method proposed. The performance of a neural network to classify scaled, shifted, and rotated binary images is also reported.

伸长和收缩图像的神经模式分类
本文提出了一种对被拉长或收缩的图像进行分类的技术。这个问题是用常规矩来表述的。结果表明,当图像在x和y方向上进行不相等缩放时,常规矩不变量不再保持不变。提出了一种构造在这种不均匀缩放和移动情况下不变矩的方法。通过基于代数不变量理论的矩组合,使一些特征变为旋转不变量。最后给出了图像的计算机仿真结果,验证了所提方法的有效性。本文还报道了神经网络对缩放、移位和旋转二值图像进行分类的性能。
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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