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New Algorithms for the Estimation of Two-Dimensional Cyclic Spectral Information Based on Tensor Equations

机译:基于张量方程的二维循环谱信息估计的新算法

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The hidden periodicity detection using a cyclic spectral function (CSF) is one of the well-known methods for cyclostationary signals analysis. Many two-dimensional signals (2D-signals), such as textures, can be considered cyclostationary or semi-cyclostationary. Applying such an assumption provides a new effective field for the analysis of 2D-signals. This paper presents two new algorithms for two-dimensional CSF (2D-CSF) estimation, namely two-dimensional tensor-based FFT accumulation method (2DT-FAM) and two-dimensional tensor-based strip spectral correlation analyzer (2DT-SSCA). These algorithms are fast and parallel. Moreover, they are based on tensor equations and linear-algebra that provide many advantages in the computational efficiency. Furthermore, the proposed schemes produce more information by preserving the information between pixels of an image using a two-dimensional window that improves classification accuracy and noise resistance property. To evaluate the performance of proposed algorithms, they are employed on two popular databases in texture analysis. 2DT-FAM as the unused promising texture analyzer and the new implementation of two-dimensional strip spectral correlation analyzer 2D-SSCA are compared with other state-of-the-art methods in terms of processing time, noise resistance, and classification accuracy. Experiment results show a 2% increase in correct classification rate and 10 times reduction in input feature dimensions in comparison with other studies and a 0.24 s decrease in processing times in comparison with the ordinary two-dimensional SSCA.
机译:使用循环光谱功能(CSF)的隐性周期性检测是循环信号分析的公知方法之一。许多二维信号(2D信号)(例如纹理)可以被视为卷曲或半循环静态。应用这种假设为分析2D信号提供了一种新的有效领域。本文呈现了二维CSF(2D-CSF)估计的两种新算法,即二维张量的FFT累积方法(2DT-FAM)和二维张量基条带谱相关分析仪(2DT-SSCA)。这些算法快速且平行。此外,它们基于张量方程和线性代数,其在计算效率下提供许多优点。此外,所提出的方案通过使用提高分类精度和抗噪性属性的二维窗口保留图像的像素之间的信息来产生更多信息。为了评估所提出的算法的性能,它们是在纹理分析中的两个流行数据库上使用的。 2DT-FAM作为未使用的有希望的纹理分析仪和二维带光谱相关分析仪2D-SSCA的新实现与其他最先进的方法在处理时间,抗噪声和分类准确性方面进行了比较。实验结果表明,与普通二维SSCA相比,正确的分类率和输入特征尺寸减少了10倍的输入特征尺寸的10倍。

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