Weighted orthogonal constrained maximum likelihood ICA algorithm and its application in image feature extraction

Tian Tian
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Abstract

The higher-order statistics based independent component analysis (ICA) algorithm can extract natural image features. Based on the maximum likelihood ICA criterion, and using the weighted orthogonal constrained natural gradient, a new ICA algorithm is proposed. Natural image feature extraction simulation results show that, compared with other ICA algorithms, the proposed algorithm has faster convergence rate, most of the extracted basis vectors are localized in space, frequency, and orientation, which can describe the features of the natural images well, and the corresponding coefficients are very sparse, obey stronger super-Gaussian distribution with very high kurtosis.
加权正交约束最大似然ICA算法及其在图像特征提取中的应用
基于高阶统计量的独立分量分析(ICA)算法可以提取自然图像的特征。基于极大似然ICA准则,利用加权正交约束自然梯度,提出了一种新的ICA算法。自然图像特征提取仿真结果表明,与其他ICA算法相比,本文算法具有更快的收敛速度,提取的基向量大部分在空间、频率和方向上都有一定的局部化,能够很好地描述自然图像的特征,相应的系数非常稀疏,服从较强的超高斯分布,峰度很高。
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