Phase stretch transform

Phase stretch transform (PST) is a computational approach to signal and image processing.

[1][2] PST is related to time stretch dispersive Fourier transform.

[3] It transforms the image by emulating propagation through a diffractive medium with engineered 3D dispersive property (refractive index).

[4] PST performs similar functionality as phase-contrast microscopy, but on digital images.

PST can be applied to digital images and temporal (time series) data.

[5] Here the principle is described in the context of feature enhancement in digital images.

The image is first filtered with a spatial kernel followed by application of a nonlinear frequency-dependent phase.

The output of the transform is the phase in the spatial domain.

The main step is the 2-D phase function which is typically applied in the frequency domain.

The amount of phase applied to the image is frequency dependent, with higher amount of phase applied to higher frequency features of the image.

Features can be further enhanced by applying thresholding and morphological operations.

Photonic time stretch technique can be understood by considering the propagation of an optical pulse through a dispersive fiber.

By disregarding the loss and non-linearity in fiber, the non-linear Schrödinger equation governing the optical pulse propagation in fiber upon integration [6] reduces to: where

is the reshaped output pulse at distance z and time t. The response of this dispersive element in the time-stretch system can be approximated as a phase propagator as presented in [4]

1 can be written as following for a pulse that propagates through the time-stretch system and is reshaped into a temporal signal with a complex envelope given by [4] The time stretch operation is formulated as generalized phase and amplitude operations, where

is the amplitude filter and FFT is fast Fourier transform.

PST operator is defined as the phase of the Warped Stretch Transform output as follows where

A simple example for such phase derivative profiles is the inverse tangent function.

Consider the phase profile in the polar coordinate system From

are real-valued numbers related to the strength and warp of the phase profile PST has been used for edge detection in biological and biomedical images as well as synthetic-aperture radar (SAR) image processing.

[7][8][9] PST has also been applied to improve the point spread function for single molecule imaging in order to achieve super-resolution.

[10] The transform exhibits intrinsic superior properties compared to conventional edge detectors for feature detection in low contrast visually impaired images.

[11] The PST function can also be performed on 1-D temporal waveforms in the analog domain to reveal transitions and anomalies in real time.

[4] On February 9, 2016, a UCLA Engineering research group has made public the computer code for PST algorithm that helps computers process images at high speeds and "see" them in ways that human eyes cannot.

The researchers say the code could eventually be used in face, fingerprint, and iris recognition systems for high-tech security, as well as in self-driving cars' navigation systems or for inspecting industrial products.

[12] However, it is provided for research purposes only, and a license must be obtained for any commercial applications.

The code was then significantly refactored and improved to support GPU acceleration.

In May 2022, it became one algorithm in PhyCV: the first physics-inspired computer vision library.

PST operated on an astronomical image reveals the accuracy of the method in enhancing sharp and faint features.
PST edge detection on lightbulb image
Feature enhancement in an image ( St Paul's Cathedral , London) using phase stretch transform (PST). Left panel shows the original image and the right panel shows the detected features using PST.
PST applied for resolution enhancement in microscopy
Application of PST to feature enhancement in biomedical images. Left panel shows the original image and the right panel shows the detected features using PST.
PST operated on Barbara image reveals the accuracy of the method in enhancing sharp and close by features. Left panel shows the original image and the right panel shows the detected features using PST.
Application of PST for feature enhancement in synthetic-aperture radar (SAR) images. In this figure detected features (in red) are overlaid with the original SAR image.
Feature detection on 1-D time domain data using phase stretch transform.