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Improved quality of reconstructed images using floating point arithmetic for moment calculation

机译:使用浮点算术来改善重建图像的质量暂时计算

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摘要

Zernike moments which are superior to geometric moments because of their special properties of image reconstruction and immunity to noise. suffer from several discretization errors. These errors lead to poor quality of reconstructed image and wide variations in the numerical values of the moments. The predominant factor, as observed in this paper, is due to the discrete integer implementation of the steps involved in moment calculation. It is shown in this paper that by modifying the algorithms to include discrete float implementation, the quality of the reconstructed image improves significantly and the first-order moment becomes zero. Low-order Zernike moments have been found to be stable under linear transformations while the high-order moments have large variations. The large variations in high-order moments, however, do not greatly affect the quality of the reconstructed image, implying that they should be ignored when numerical values of moments are used as features. The 11 functions based on geometric moments have also been found to be stable under linear transformations and thus these can be used as features. Pixel level analysis of the images has been carried out to strengthen the results. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:Zernike矩优于几何时刻,因为它们的图像重建和噪声的免疫力特性。遭受几种离散化错误。这些误差导致重建图像质量差和时刻数值的宽变化。如本文所观察到的主要因素是由于片刻计算中涉及的步骤的离散整数实现。本文示出了通过修改算法来包括离散浮点实现,重建图像的质量显着提高,并且一阶矩变为零。已经发现低阶Zernike矩在线性变换下稳定,而高阶矩具有大的变化。然而,高阶时刻的大变化不会大大影响重建图像的质量,这意味着当使用数值的数值用作特征时,应忽略它们。还发现基于几何矩的11个功能在线性变换下是稳定的,因此这些可以用作特征。已经执行了图像的像素水平分析以增强结果。 (c)2006年模式识别协会。 elsevier有限公司出版。保留所有权利。

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