Signal subspace refers to a conceptual framework used in signal processing, particularly in the context of dimensionality reduction, feature extraction, and various applications such as array signal processing, estimation, and machine learning. The idea is based on the notion that signals of interest reside in a lower-dimensional space (subspace) of the overall signal space.
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