Hilbert spectrum
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The Hilbert spectrum (sometimes referred to as the Hilbert amplitude spectrum), named after
David Hilbert David Hilbert (; ; 23 January 1862 – 14 February 1943) was a German mathematician, one of the most influential mathematicians of the 19th and early 20th centuries. Hilbert discovered and developed a broad range of fundamental ideas in many ...
, is a statistical tool that can help in distinguishing among a mixture of moving signals. The spectrum itself is decomposed into its component sources using
independent component analysis In signal processing, independent component analysis (ICA) is a computational method for separating a multivariate signal into additive subcomponents. This is done by assuming that at most one subcomponent is Gaussian and that the subcomponents ar ...
. The separation of the combined effects of unidentified sources ( blind signal separation) has applications in
climatology Climatology (from Greek , ''klima'', "place, zone"; and , '' -logia'') or climate science is the scientific study of Earth's climate, typically defined as weather conditions averaged over a period of at least 30 years. This modern field of stu ...
,
seismology Seismology (; from Ancient Greek σεισμός (''seismós'') meaning "earthquake" and -λογία (''-logía'') meaning "study of") is the scientific study of earthquakes and the propagation of elastic waves through the Earth or through other ...
, and biomedical imaging.


Conceptual summary

The Hilbert spectrum is computed by way of a 2-step process consisting of: * Preprocessing a signal separate it into intrinsic mode functions using a mathematical decomposition such as
singular value decomposition In linear algebra, the singular value decomposition (SVD) is a factorization of a real or complex matrix. It generalizes the eigendecomposition of a square normal matrix with an orthonormal eigenbasis to any \ m \times n\ matrix. It is re ...
(SVD) or
empirical mode decomposition Empirical evidence for a proposition is evidence, i.e. what supports or counters this proposition, that is constituted by or accessible to sense experience or experimental procedure. Empirical evidence is of central importance to the sciences and ...
(EMD); * Applying the Hilbert transform to the results of the above step to obtain the instantaneous frequency spectrum of each of the components. The
Hilbert transform In mathematics and in signal processing, the Hilbert transform is a specific linear operator that takes a function, of a real variable and produces another function of a real variable . This linear operator is given by convolution with the functi ...
defines the imaginary part of the function to make it an analytic function (sometimes referred to as a
progressive function In mathematics, a progressive function ''ƒ'' ∈ ''L''2(R) is a function whose Fourier transform is supported by positive frequencies only: :\mathop\hat \subseteq \mathbb_+. It is called super regressive if and only if the time ...
), ''i.e.'' a function whose
signal strength In telecommunications, particularly in radio frequency engineering, signal strength refers to the transmitter power output as received by a reference antenna at a distance from the transmitting antenna. High-powered transmissions, such as those u ...
is zero for all frequency components less than zero. With the Hilbert transform, the singular vectors give instantaneous frequencies that are functions of time, so that the result is an
energy In physics, energy (from Ancient Greek: ἐνέργεια, ''enérgeia'', “activity”) is the quantitative property that is transferred to a body or to a physical system, recognizable in the performance of work and in the form of ...
distribution over
time Time is the continued sequence of existence and event (philosophy), events that occurs in an apparently irreversible process, irreversible succession from the past, through the present, into the future. It is a component quantity of various me ...
and
frequency Frequency is the number of occurrences of a repeating event per unit of time. It is also occasionally referred to as ''temporal frequency'' for clarity, and is distinct from ''angular frequency''. Frequency is measured in hertz (Hz) which is eq ...
. The result is an ability to capture time-frequency localization to make the concept of instantaneous frequency and time relevant (the concept of instantaneous frequency is otherwise abstract or difficult to define for all but monocomponent signals).


Definition

For a given signal x(t) decomposed (with for example
Empirical Mode Decomposition Empirical evidence for a proposition is evidence, i.e. what supports or counters this proposition, that is constituted by or accessible to sense experience or experimental procedure. Empirical evidence is of central importance to the sciences and ...
) to x(t) = r(t) + \sum_^ c_j(t) where k is the number of intrinsic mode functions that x(t) consists of and c_j(t) = \mathbb\big\ = a_j(t) \cos\big(\theta_j(t)\big) The instantaneous angle frequency is then defined as \omega_j(t) = \frac From this, we can define the Hilbert Spectrum for c_j(t) as H_j(\omega, t) = \begin a_j(t), & \omega=\omega_j(t) \\ 0, & \text \end The Hilbert Spectrum of x(t) is then given by H(\omega, t) = \sum_^ H_j(\omega, t)


Marginal Hilbert Spectrum

A two dimensional representation of a Hilbert Spectrum, called Marginal Hilbert Spectrum, is defined as h(\omega) = \frac\int_^ H(\omega, t) dt where T is the length of the sampled signal x(t). The Marginal Hilbert Spectrum show the total energy that each frequency value contribute with.Norden E Huang, Samuel S P Shen, Hilbert-Huang Transform and Its Applications, 2nd edition


Applications

The Hilbert spectrum has many practical applications. One example application pioneered by Professor
Richard Cobbold Richard Cobbold (1797 – 5 January 1877) was a British writer. Life Richard Cobbold was born in 1797 in the Suffolk town of Ipswich, to John (1746–1835) and the poet and writer Elizabeth (née Knipe) Cobbold (1764–1824). The Cobbolds we ...
, is the use of the Hilbert spectrum for the analysis of
blood flow Hemodynamics or haemodynamics are the dynamics of blood flow. The circulatory system is controlled by homeostatic mechanisms of autoregulation, just as hydraulic circuits are controlled by control systems. The hemodynamic response continuously m ...
by pulse Doppler
ultrasound Ultrasound is sound waves with frequencies higher than the upper audible limit of human hearing. Ultrasound is not different from "normal" (audible) sound in its physical properties, except that humans cannot hear it. This limit varies ...
. Other applications of the Hilbert spectrum include analysis of climatic features,
water waves In fluid dynamics, a wind wave, water wave, or wind-generated water wave, is a surface wave that occurs on the free surface of bodies of water as a result from the wind blowing over the water surface. The contact distance in the direction of ...
, and the like.


See also

*
Hilbert–Huang transform The Hilbert–Huang transform (HHT) is a way to decompose a Signal processing, signal into so-called intrinsic mode functions (IMF) along with a trend, and obtain instantaneous frequency data. It is designed to work well for data that is Station ...


References

*Huang, et al.,
The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis
''Proc. R. Soc. Lond.'' (A) 1998 * {{cite journal , last1 = Huang , first1 = N.E. , display-authors=etal , year = 2016 , title = On Holo-Hilbert spectral analysis: a full informational spectral representation for nonlinear and non-stationary data , doi = 10.1098/rsta.2015.0206 , journal = Phil. Trans. R. Soc. Lond. A , volume = 374, pages = 20150206, bibcode = 2016RSPTA.37450206H, pmc = 4792412 , pmid=26953180 Signal processing