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On Using Quaternionic Rotations for Indpendent Component Analysis

机译:在独立分量分析中使用四元旋转

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摘要

Independent component analysis (ICA) is a popular technique for demixing multi-sensor data. In many approaches to the ICA, signals are decorrelated by whitening data and then by rotating the result. In this paper, we introduce a four-unit, symmetric algorithm, based on quaternionic factorization of rotation matrix. It makes use an isomorphism between quaternions and 4×4 orthogonal matrices. Unlike conventional techniques based on Jacobi decomposition, our method exploits 4D rotations and uses negentropy approximation as a contrast function. Compared to the widely used, symmetric FastICA algorithm, the proposed method offers a better separation quality in a presence of multiple Gaussian sources.
机译:独立分量分析(ICA)是一种流行的技术,用于解映射多传感器数据。在ICA的许多方法中,通过旋转结果,通过旋转来取消插件信号。在本文中,我们介绍了一种基于旋转矩阵的四元分解的四单元对称算法。它在四季度和4×4正交矩阵之间使用同构。与基于Jacobi分解的传统技术不同,我们的方法利用4D旋转并使用对比度函数的共度近似值。与广泛使用的对称Fastica算法相比,该方法在存在多个高斯来源的情况下提供更好的分离质量。

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