The lattice DSP concept map¶
How the classical ideas fit together¶
lattice-dsp uses terminology from several communities: speech linear
prediction, digital filters, orthogonal polynomials, operator theory,
rational approximation, multirate filter banks, and MIMO signal processing.
This page is a map of that vocabulary. It is not meant to be a complete
mathematical treatment. Its purpose is to help readers recognize why the
examples in the package belong together. For the interpolation and numerical
conditioning motivation behind Schur/reflection coordinates, see
Interpolation, Schur stability, and why lattice coordinates help.
The short version is:
Lattice filters are not just implementation tricks. They are computational forms of Schur/Szegő recursions. Reflection coefficients encode stability; prediction errors expose orthogonality; all-pass and paraunitary completions expose energy preservation; Hankel and Padé viewpoints explain rational approximation and model reduction; matrix/MIMO versions replace scalar reflection coefficients by contraction matrices.
1. The core object: a stable recursive filter¶
The scalar IIR object is a rational transfer function
For a causal discrete-time filter, stability is controlled by the roots of
A. Directly updating the denominator coefficients a_i is fragile: a
small-looking coefficient update can move a pole outside the unit disk. The
lattice viewpoint replaces the polynomial coefficients by reflection/PARCOR
coefficients
For the scalar all-pole recursion, the simple condition
is the practical stability handle used throughout the package.
Where to look: Scalar lattice and lattice-ladder IIR filters, Reflection conversion, and Stability vs direct IIR.
2. Schur recursion: stability by reflection coefficients¶
The Schur recursion is the classical way to peel a stable analytic function or stable polynomial into a sequence of reflection coefficients. In signal processing language, the same idea appears as step-up/step-down conversion between denominator coefficients and PARCOR coefficients.
A typical step-up form is
where sharp denotes the reversed/conjugate polynomial. In real scalar code,
this becomes the familiar denominator update implemented by
reflection_to_denominator.
Practical interpretation:
step-up recursion builds a stable denominator from reflection coefficients;
step-down recursion tests or extracts reflection coefficients from a denominator;
a reflection coefficient with magnitude at least one signals loss of stability.
Where to look: Reflection conversion.
3. Szegő polynomials: the orthogonal-polynomial view¶
Szegő recursions are the orthogonal-polynomial-on-the-unit-circle version of the same structure. Instead of viewing the recursion as a filter realization, one views it as building orthogonal polynomials with respect to a spectral measure. The reflection coefficients are then the unit-circle analogues of recursion parameters; in the OPUC literature they are often called Verblunsky coefficients.
For AR modeling, this is the conceptual bridge:
That is why Levinson-Durbin, Burg estimation, prediction-error filters, and lattice filters are so tightly connected.
Where to look: AR estimation: autocorrelation, Levinson-Durbin, and Burg, Burg and Levinson AR tools, and AR spectral estimation.
4. Christoffel-Darboux: why prediction errors and kernels appear¶
The Christoffel-Darboux identity is a compact identity for sums of orthogonal polynomials. In this package it is not exposed as a public function, but it is part of the background explaining why AR spectra, prediction-error energies, and reproducing kernels are related.
A schematic version of the message is:
can be rewritten using only the latest orthogonal polynomials and their reversed partners. In filtering language, many cumulative prediction quantities can be represented through the current forward/backward prediction-error polynomials instead of through the whole history.
Practical interpretation:
prediction-error filters are not arbitrary residual generators;
they are orthogonalization objects;
spectral peaks and prediction error are two views of the same AR model.
Where to look: Spectral diagnostics: periodogram, AR, Burg, and Capon, Periodogram vs AR spectrum, and Spectral diagnostics comparison.
5. Orthogonal filters: lattice stages as rotations/reflections¶
A scalar lattice stage can be read as a local transformation of forward and backward prediction errors. In stable/lossless normalizations, lattice stages behave like elementary rotations or hyperbolic rotations. This is why lattice filters appear naturally in speech coding, AR modeling, wave digital filters, and filter-bank realizations.
For MIMO and matrix-valued systems, the scalar coefficient k is replaced by
a matrix K. The scalar bound becomes a contraction condition:
This is one of the most important analogies in the package.
Where to look: Matrix lattice all-pass filters, Matrix lattice all-pass, and ML unitary convolution demo.
6. All-pass completion: from a stable denominator to a lossless system¶
An all-pass system has unit magnitude response in the scalar case:
A matrix all-pass or paraunitary system satisfies the stronger matrix identity
This means the system redistributes energy across time, frequency, or channels without changing total energy. Lattice and matrix-lattice structures are useful because they can parameterize such energy-preserving systems through stable local factors.
Practical interpretation:
all-pass completions turn stability constraints into lossless systems;
paraunitary filter banks are multichannel all-pass/orthogonal systems in polyphase form;
MIMO lattice stages are compact parameterizations of structured unitary or contractive responses.
Where to look: Matrix lattice all-pass filters, Matrix unitary response compression, Paraunitary filter-bank demo.
7. Hankel forms and Padé: rational approximation and model reduction¶
A recursive filter is a rational approximation to an input-output map. Two classical ways to understand reduced-order rational models are:
Padé approximation: match a finite number of moments or Taylor/Markov coefficients;
Hankel/operator approximation: approximate the map from past inputs to future outputs.
Given an impulse response
one finite Hankel matrix is
Its singular values indicate how much input-output memory is carried by successive directions. That is why Hankel singular values are natural order selection diagnostics for reduced IIR models.
The current package includes finite model-reduction benchmarks and finite-section Nehari/AAK-style diagnostics. Exact infinite-dimensional Nehari/AAK reduction is outside the public scope. The theory pages explain this scope map.
Where to look: Hardy, Hankel, reachability, and observability, Interpolation, Schur stability, and why lattice coordinates help, Model reduction, Hankel operators, Nehari, and AAK, and Model-reduction benchmark.
8. Matrix/MIMO generalization: contractions replace scalar coefficients¶
The matrix/MIMO path is the rare part of the package. The scalar lattice story has the following matrix analogue:
Scalar lattice idea |
Matrix/MIMO analogue |
|---|---|
reflection coefficient |
reflection/contraction matrix |
stability condition |
contraction condition |
scalar all-pass response |
matrix all-pass/unitary response |
scalar AR prediction error |
vector AR prediction-error covariance |
denominator polynomial |
matrix polynomial / block Toeplitz system |
Levinson recursion |
block Levinson / LWR-style recursion |
This is why scalar lattice filters, multichannel AR, paraunitary filter banks, and ML-inspired unitary convolutions are grouped together in the docs. They are all examples of structured stable or energy-preserving transformations.
Where to look: Multichannel AR and block Levinson, Matrix lattice all-pass filters, Multichannel Levinson AR, and MIMO lattice vs block Levinson, Diagonal MIMO equals independent SISO, and Finite block-Hankel MIMO reduction.
9. Where each concept appears in the package¶
Concept |
What it means |
Where it appears |
|---|---|---|
Schur recursion |
Converts stable denominators to and from reflection coefficients. |
|
Szegő recursion |
Orthogonal-polynomial version of the same reflection-coefficient recursion. |
AR estimation: autocorrelation, Levinson-Durbin, and Burg; Burg/Levinson AR tools |
Schur/Jury stability test |
Tests whether polynomial roots lie inside the unit disk; failed step-down coefficients reveal instability. |
Scalar lattice and lattice-ladder IIR filters; Stability vs direct IIR |
Christoffel-Darboux identity |
Reproducing-kernel identity behind compact prediction-error and spectral formulas. |
Spectral diagnostics: periodogram, AR, Burg, and Capon; AR spectral estimation |
Orthogonal lattice filters |
Lattice stages as local rotations/reflections of forward/backward errors. |
|
All-pass completion |
Completes a stable scalar or matrix factor into a lossless/energy-preserving response. |
|
Hankel forms |
Encode input-output memory and moment/impulse-response matching. |
Model reduction, Hankel operators, Nehari, and AAK; Finite-Hankel SISO reduction; Finite block-Hankel MIMO reduction |
Padé approximation |
Builds rational approximants from moment or series matching. |
Model reduction, Hankel operators, Nehari, and AAK; rational-approximation diagnostics |
Walsh and rational approximation viewpoints |
Organize tables/families of rational approximants and explain degeneracies or near-cancellations. |
Rational-approximation diagnostics |
Schmidt pairs / Schmidt form |
Singular-vector structure of Hankel operators used in AAK theory. |
Model reduction, Hankel operators, Nehari, and AAK; finite-section AAK diagnostics |
Matrix Schur / matrix lattice forms |
MIMO generalization where reflection coefficients become contraction matrices. |
Matrix lattice all-pass filters; MIMO lattice vs block Levinson; Diagonal MIMO equals independent SISO |
Suggested reading order¶
For a new reader, the most useful path is:
Scalar lattice and lattice-ladder IIR filters for scalar stability and reflection coefficients.
AR estimation: autocorrelation, Levinson-Durbin, and Burg and Spectral diagnostics: periodogram, AR, Burg, and Capon for prediction and spectra.
Adaptive lattice filters: NLMS and RLS and LMS as a minimax robust filter for adaptive filtering.
Model reduction, Hankel operators, Nehari, and AAK for the model-reduction scope map.
Multichannel AR and block Levinson and Matrix lattice all-pass filters for the matrix/MIMO direction.
References¶
For classical background, see References and further reading, especially the sections on scalar lattice filters, OPUC/Schur/Szegő theory, multirate/paraunitary systems, and Hankel/Nehari/AAK model reduction.