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Stacked Sparse Blind Source Separation for Non-Linear Mixtures

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Figure 1. Left: Original sources; Right: A non-linear mixing of the left sources. The dashed arrows correspond to the mixing  direc-tions found by a linear model.
Figure 2. Main steps of StackedAMCA and corresponding nota- nota-tions
Figure 3. Illustration of the main steps of the algorithm on the non-linear mixing of Fig
Figure 5. StackedAMCA as neural network
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