Timezone: »
We propose a class of sparse coding models that utilizes a Laplacian Scale Mixture (LSM) prior to model dependencies among coefficients. Each coefficient is modeled as a Laplacian distribution with a variable scale parameter, with a Gamma distribution prior over the scale parameter. We show that, due to the conjugacy of the Gamma prior, it is possible to derive efficient inference procedures for both the coefficients and the scale parameter. When the scale parameters of a group of coefficients are combined into a single variable, it is possible to describe the dependencies that occur due to common amplitude fluctuations among coefficients, which have been shown to constitute a large fraction of the redundancy in natural images. We show that, as a consequence of this group sparse coding, the resulting inference of the coefficients follows a divisive normalization rule, and that this may be efficiently implemented a network architecture similar to that which has been proposed to occur in primary visual cortex. We also demonstrate improvements in image coding and compressive sensing recovery using the LSM model.
Author Information
Pierre J Garrigues (IQ Engines, Inc.)
Bruno Olshausen (Redwood Center/UC Berkeley)
More from the Same Authors
-
2022 : Neuromorphic Visual Scene Understanding with Resonator Networks (in brief) »
Alpha Renner · Giacomo Indiveri · Lazar Supic · Andreea Danielescu · Bruno Olshausen · Fritz Sommer · Yulia Sandamirskaya · Edward Frady -
2022 : Disentangling Images with Lie Group Transformations and Sparse Coding »
Ho Yin Chau · Frank Qiu · Yubei Chen · Bruno Olshausen -
2022 : Panel Discussion II: Geometric and topological principles for representations in the brain »
Bruno Olshausen · Kristopher Jensen · Gabriel Kreiman · Manu Madhav · Christian A Shewmake -
2022 : In search of invariance in brains and machines »
Bruno Olshausen -
2019 Poster: Superposition of many models into one »
Brian Cheung · Alexander Terekhov · Yubei Chen · Pulkit Agrawal · Bruno Olshausen -
2018 Poster: The Sparse Manifold Transform »
Yubei Chen · Dylan Paiton · Bruno Olshausen -
2009 Workshop: Manifolds, sparsity, and structured models: When can low-dimensional geometry really help? »
Richard Baraniuk · Volkan Cevher · Mark A Davenport · Piotr Indyk · Bruno Olshausen · Michael B Wakin -
2009 Poster: Learning transport operators for image manifolds »
Jack Culpepper · Bruno Olshausen -
2008 Poster: Learning Transformational Invariants from Time-Varying Natural Images »
Charles Cadieu · Bruno Olshausen -
2008 Spotlight: Learning Transformational Invariants from Time-Varying Natural Images »
Charles Cadieu · Bruno Olshausen -
2007 Poster: Learning Horizontal Connections in a Sparse Coding Model of Natural Images »
Pierre Garrigues · Bruno Olshausen