首页> 外文会议>Second Internatioal Conference on Image and Graphics Pt.1, Aug 16-18, 2002, Hefei, China >Applications of independent component analysis to image feature extraction
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Applications of independent component analysis to image feature extraction

机译:独立分量分析在图像特征提取中的应用

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Independent Component Analysis (ICA) is a new signal processing method developed recently which analyzes the data from a statistical point of view. In ICA, one can try to express a set of random variables as linear combinations of statistically independent components. In this paper, ICA is applied to image feature extraction, and the information maximization algorithm is performed to optimize the results. From the results, it can be seen that the extracted features represent the image data in a natural way. In addition, the ICA basis vectors are localized and oriented, and sensitive to lines and edges of varying thickness of images. As an application of these extracted features, another denoising experiment is done. In this experiment a Gaussian noise is reduced by applying a soft-thresholding operator on the extracted ICA coefficients.
机译:独立分量分析(ICA)是最近开发的一种新的信号处理方法,可以从统计角度分析数据。在ICA中,可以尝试将一组随机变量表示为统计独立分量的线性组合。本文将ICA应用于图像特征提取,并采用信息最大化算法对结果进行优化。从结果可以看出,提取的特征以自然的方式表示图像数据。另外,ICA基向量是局部的和定向的,并且对变化的图像厚度的线和边缘敏感。作为这些提取特征的应用,完成了另一个去噪实验。在该实验中,通过对提取的ICA系数应用软阈值算子来降低高斯噪声。

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