Projection filters, in the context of signal processing and machine learning, refer to techniques used to extract specific features or components from signals or data by projecting them into a lower-dimensional space or onto a certain subspace. This can be particularly useful for noise reduction, feature extraction, and dimensionality reduction. Here’s an overview of their main aspects: 1. **Mathematical Basis**: A projection filter typically involves linear algebra concepts, where data is represented as vectors in a high-dimensional space.

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