Basics of vector-space formalism for linear approximations: from orthonormal bases to redundant frames for global and local weighted least-squares approximations. Coupled frames and principled design of operators and (convolution) kernels for the interpolation, resampling, smoothing, and differentiation of regularly and irregularly sampled data.


Course Content:

  • Vector and inner-product spaces
  • Bases, Analysis and Synthesis
  • Orthonormalization, Approximations
  • Continuous-variable models for discrete data
  • Global vs Local Processing
  • Windowing and weighted norms
  • Moving least squares
  • Frames and Dual frames
  • Singular Value Decomposition, Principal components and KLT transforms
  • Smoothing operators
  • Discrete differential operators
  • Color spaces and color and multispectral image processing
  • Popular transforms
  • Noise propagation

All the above is explained and demonstrated through a vast set of working examples in Matlab and Python.


Learning outcomes
After completing this course, the student will
  • be able to model and solve signal processing problems through a wide range of vector-space methods
  • be able to extend the geometrical intuition from familiar 2D and 3D to very high-dimensional settings within a rigorous framework
  • be able to implement a wide range of fixed and adaptive signal transforms and understand their general properties
  • master the geometrical structures inherent to basic signal processing techniques, including color transforms, convolution filters, sliding window methods.
  • be able to design and implement consistent multi-dimensional differential operators for discrete signals
  • be able to analyze the propagation of signal distortions (e.g., noise) across transformations

  • Opettaja: Alessandro Foi