接近2D-FPCA技术改善频域图像表示

T. Le, Hung Phuoc Truong, H. T. Do, Duc Minh Vo
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引用次数: 6

摘要

提出了一种基于频域结构信息提取的图像表示方法。针对这一问题,将一种新的基于频域二维分数主成分分析(2D-FPCA)的子空间方法应用于图像,提取纹理信息。为了提取结构信息,系统利用这一新的子空间作为2D-FPCA技术的双边考虑,称为B2D-FPCA。为此:(1)首先介绍了基于分数阶方差和分数阶协方差矩阵定义的2D-FPCA理论;(2)然后展示其改进称为双边2D-FPCA; (3) 2D-DCT的鲁棒性也被描述为预处理步骤。将该方法应用于面部表情表示问题,证明了该框架的稳定性和鲁棒性。为了演示,使用面部表情数据集(JAFFE, Pain expression子集和Cohn-Kanade)将所提出的框架与其他一些方法进行比较。
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On approaching 2D-FPCA technique to improve image representation in frequency domain
A novel approach based on structure information extraction in frequency domain is proposed for image representation problem. Regarding this problem, a new subspace method based on Two-dimensional Fractional Principle Component Analysis (2D-FPCA) in frequency domain is applied to images, thus extracting the texture information. In order to extract the structure information, the system utilizes this new subspace as the bilateral consideration of 2D-FPCA technique called B2D-FPCA. For this purpose: (1) we first introduce the theory of 2D-FPCA based on the definition of fractional variance and fractional covariance matrix; (2) then show its improvement called Bilateral 2D-FPCA and (3) the robustness of 2D-DCT is also described as the preprocessing step. This approach is applied to facial expression representation problem to prove the stability and robustness of the proposed framework. For demonstration, facial expressions datasets (JAFFE, Pain expression subset and Cohn-Kanade) are used in order to compare the proposed framework with some other approaches.
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