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Inlier-Based ICA with an Application to Superimposed Images

机译:基于内联的ICA及其在叠加图像中的应用

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This paper proposes a new independent component analysis (ICA) method which is able to unmix overcomplete mixtures of sparce or structured signals like speech, music or images. Furthermore, the method is designed to be robust against outliers, which is a favorable feature for ICA algorithms since most of them are extremely sensitive to outliers. Our approach is based on a simple outlier index. However, instead of robustifying an existing algorithm by some outlier rejection technique we show how this index can be used directly to solve the ICA problem for super-Gaussian sources. The resulting inlier-based ICA (IBICA) is outlier-robust by construction and can be used for standard ICA as well as for overcomplete ICA (i.e. more source signals than observed signals).
机译:本文提出了一种新的独立成分分析(ICA)方法,该方法能够解散稀疏的稀疏混合的稀疏或结构化信号,例如语音,音乐或图像。此外,该方法被设计为对异常值具有鲁棒性,这对ICA算法而言是一个有利的功能,因为它们大多数都对异常值非常敏感。我们的方法基于一个简单的异常值索引。但是,我们没有通过某种异常值剔除技术来使现有算法稳定,而是展示了如何将该指数直接用于解决超高斯源的ICA问题。最终的基于内部的ICA(IBICA)在构造上具有异常的鲁棒性,可用于标准ICA以及超完备的ICA(即,源信号多于观察到的信号)。

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