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Two-dimensional Singular Value Decomposition (2D SVD) is a concept employed mainly in image processing and data analysis, where data is represented as a two-dimensional matrix (e.g., an image represented by pixel intensity values). It is an extension of the traditional singular value decomposition (SVD), which is typically applied to one-dimensional matrices (vectors) or higher-dimensional tensors.

Ancestors (6)

  1. Singular value decomposition
  2. Linear algebra
  3. Algebra
  4. Fields of mathematics
  5. Mathematics
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