» Articles » PMID: 37398936

Covariance Properties Under Natural Image Transformations for the Generalised Gaussian Derivative Model for Visual Receptive Fields

Overview
Specialty Biology
Date 2023 Jul 3
PMID 37398936
Authors
Affiliations
Soon will be listed here.
Abstract

The property of covariance, also referred to as equivariance, means that an image operator is well-behaved under image transformations, in the sense that the result of applying the image operator to a transformed input image gives essentially a similar result as applying the same image transformation to the output of applying the image operator to the original image. This paper presents a theory of geometric covariance properties in vision, developed for a generalised Gaussian derivative model of receptive fields in the primary visual cortex and the lateral geniculate nucleus, which, in turn, enable geometric invariance properties at higher levels in the visual hierarchy. It is shown how the studied generalised Gaussian derivative model for visual receptive fields obeys true covariance properties under spatial scaling transformations, spatial affine transformations, Galilean transformations and temporal scaling transformations. These covariance properties imply that a vision system, based on image and video measurements in terms of the receptive fields according to the generalised Gaussian derivative model, can, to first order of approximation, handle the image and video deformations between multiple views of objects delimited by smooth surfaces, as well as between multiple views of spatio-temporal events, under varying relative motions between the objects and events in the world and the observer. We conclude by describing implications of the presented theory for biological vision, regarding connections between the variabilities of the shapes of biological visual receptive fields and the variabilities of spatial and spatio-temporal image structures under natural image transformations. Specifically, we formulate experimentally testable biological hypotheses as well as needs for measuring population statistics of receptive field characteristics, originating from predictions from the presented theory, concerning the extent to which the shapes of the biological receptive fields in the primary visual cortex span the variabilities of spatial and spatio-temporal image structures induced by natural image transformations, based on geometric covariance properties.

Citing Articles

Orientation selectivity properties for the affine Gaussian derivative and the affine Gabor models for visual receptive fields.

Lindeberg T J Comput Neurosci. 2025; 53(1):61-98.

PMID: 39878929 PMC: 11868404. DOI: 10.1007/s10827-024-00888-w.

References
1.
Logothetis N, Pauls J, Poggio T . Shape representation in the inferior temporal cortex of monkeys. Curr Biol. 1995; 5(5):552-63. DOI: 10.1016/s0960-9822(95)00108-4. View

2.
Johnson E, Hawken M, Shapley R . The orientation selectivity of color-responsive neurons in macaque V1. J Neurosci. 2008; 28(32):8096-106. PMC: 2896204. DOI: 10.1523/JNEUROSCI.1404-08.2008. View

3.
Lindeberg T . A computational theory of visual receptive fields. Biol Cybern. 2013; 107(6):589-635. PMC: 3840297. DOI: 10.1007/s00422-013-0569-z. View

4.
Pintea S, Tomen N, Goes S, Loog M, van Gemert J . Resolution Learning in Deep Convolutional Networks Using Scale-Space Theory. IEEE Trans Image Process. 2021; 30:8342-8353. DOI: 10.1109/TIP.2021.3115001. View

5.
Hubel D, Wiesel T . Receptive fields and functional architecture of monkey striate cortex. J Physiol. 1968; 195(1):215-43. PMC: 1557912. DOI: 10.1113/jphysiol.1968.sp008455. View