Literature DB >> 18194102

The berkeley wavelet transform: a biologically inspired orthogonal wavelet transform.

Ben Willmore1, Ryan J Prenger, Michael C-K Wu, Jack L Gallant.   

Abstract

We describe the Berkeley wavelet transform (BWT), a two-dimensional triadic wavelet transform. The BWT comprises four pairs of mother wavelets at four orientations. Within each pair, one wavelet has odd symmetry, and the other has even symmetry. By translation and scaling of the whole set (plus a single constant term), the wavelets form a complete, orthonormal basis in two dimensions. The BWT shares many characteristics with the receptive fields of neurons in mammalian primary visual cortex (V1). Like these receptive fields, BWT wavelets are localized in space, tuned in spatial frequency and orientation, and form a set that is approximately scale invariant. The wavelets also have spatial frequency and orientation bandwidths that are comparable with biological values. Although the classical Gabor wavelet model is a more accurate description of the receptive fields of individual V1 neurons, the BWT has some interesting advantages. It is a complete, orthonormal basis and is therefore inexpensive to compute, manipulate, and invert. These properties make the BWT useful in situations where computational power or experimental data are limited, such as estimation of the spatiotemporal receptive fields of neurons.

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Year:  2008        PMID: 18194102      PMCID: PMC5464375          DOI: 10.1162/neco.2007.05-07-513

Source DB:  PubMed          Journal:  Neural Comput        ISSN: 0899-7667            Impact factor:   2.026


  22 in total

1.  Sparse coding and decorrelation in primary visual cortex during natural vision.

Authors:  W E Vinje; J L Gallant
Journal:  Science       Date:  2000-02-18       Impact factor: 47.728

2.  Orientation selectivity in macaque V1: diversity and laminar dependence.

Authors:  Dario L Ringach; Robert M Shapley; Michael J Hawken
Journal:  J Neurosci       Date:  2002-07-01       Impact factor: 6.167

3.  Methods for first-order kernel estimation: simple-cell receptive fields from responses to natural scenes.

Authors:  Ben Willmore; Darragh Smyth
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4.  Predicting neuronal responses during natural vision.

Authors:  Stephen V David; Jack L Gallant
Journal:  Network       Date:  2005 Jun-Sep       Impact factor: 1.273

5.  Emergence of simple-cell receptive field properties by learning a sparse code for natural images.

Authors:  B A Olshausen; D J Field
Journal:  Nature       Date:  1996-06-13       Impact factor: 49.962

6.  Relations between the statistics of natural images and the response properties of cortical cells.

Authors:  D J Field
Journal:  J Opt Soc Am A       Date:  1987-12       Impact factor: 2.129

7.  Spatiotemporal energy models for the perception of motion.

Authors:  E H Adelson; J R Bergen
Journal:  J Opt Soc Am A       Date:  1985-02       Impact factor: 2.129

8.  Sparseness of the neuronal representation of stimuli in the primate temporal visual cortex.

Authors:  E T Rolls; M J Tovee
Journal:  J Neurophysiol       Date:  1995-02       Impact factor: 2.714

9.  Phase relationships between adjacent simple cells in the visual cortex.

Authors:  D A Pollen; S F Ronner
Journal:  Science       Date:  1981-06-19       Impact factor: 47.728

10.  Receptive field organization of complex cells in the cat's striate cortex.

Authors:  J A Movshon; I D Thompson; D J Tolhurst
Journal:  J Physiol       Date:  1978-10       Impact factor: 5.182

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  8 in total

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3.  Deep convolutional models improve predictions of macaque V1 responses to natural images.

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5.  Image Analysis for MRI Based Brain Tumor Detection and Feature Extraction Using Biologically Inspired BWT and SVM.

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6.  A wavelet-based neural model to optimize and read out a temporal population code.

Authors:  Andre Luvizotto; César Rennó-Costa; Paul F M J Verschure
Journal:  Front Comput Neurosci       Date:  2012-05-03       Impact factor: 2.380

7.  Model Constrained by Visual Hierarchy Improves Prediction of Neural Responses to Natural Scenes.

Authors:  Ján Antolík; Sonja B Hofer; James A Bednar; Thomas D Mrsic-Flogel
Journal:  PLoS Comput Biol       Date:  2016-06-27       Impact factor: 4.475

8.  Brain Tumor Detection and Classification by MRI Using Biologically Inspired Orthogonal Wavelet Transform and Deep Learning Techniques.

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  8 in total

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