Learning Spatially Structured Image Transformations Using Planar Neural Networks

12/03/2019
by   Joel Michelson, et al.
12

Learning image transformations is essential to the idea of mental simulation as a method of cognitive inference. We take a connectionist modeling approach, using planar neural networks to learn fundamental imagery transformations, like translation, rotation, and scaling, from perceptual experiences in the form of image sequences. We investigate how variations in network topology, training data, and image shape, among other factors, affect the efficiency and effectiveness of learning visual imagery transformations, including effectiveness of transfer to operating on new types of data.

READ FULL TEXT

page 1

page 2

page 3

page 4

page 5

page 6

research
11/14/2016

A DNN Framework For Text Image Rectification From Planar Transformations

In this paper, a novel neural network architecture is proposed attemptin...
research
10/19/1998

General Theory of Image Normalization

We give a systematic, abstract formulation of the image normalization me...
research
07/04/2023

Learning Lie Group Symmetry Transformations with Neural Networks

The problem of detecting and quantifying the presence of symmetries in d...
research
11/06/2017

Unsupervised Transformation Learning via Convex Relaxations

Our goal is to extract meaningful transformations from raw images, such ...
research
11/17/2020

Learning Canonical Transformations

Humans understand a set of canonical geometric transformations (such as ...
research
10/01/2011

Learning image transformations without training examples

The use of image transformations is essential for efficient modeling and...
research
11/18/2019

Co-Attentive Equivariant Neural Networks: Focusing Equivariance On Transformations Co-Occurring In Data

Equivariance is a nice property to have as it produces much more paramet...

Please sign up or login with your details

Forgot password? Click here to reset