Linear Readout of Object Manifolds

12/06/2015
by   SueYeon Chung, et al.
0

Objects are represented in sensory systems by continuous manifolds due to sensitivity of neuronal responses to changes in physical features such as location, orientation, and intensity. What makes certain sensory representations better suited for invariant decoding of objects by downstream networks? We present a theory that characterizes the ability of a linear readout network, the perceptron, to classify objects from variable neural responses. We show how the readout perceptron capacity depends on the dimensionality, size, and shape of the object manifolds in its input neural representation.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/01/2021

Statistical Mechanics of Neural Processing of Object Manifolds

Invariant object recognition is one of the most fundamental cognitive ta...
research
10/17/2017

Classification and Geometry of General Perceptual Manifolds

Perceptual manifolds arise when a neural population responds to an ensem...
research
11/27/2022

Linear Classification of Neural Manifolds with Correlated Variability

Understanding how the statistical and geometric properties of neural act...
research
03/14/2022

Soft-margin classification of object manifolds

A neural population responding to multiple appearances of a single objec...
research
01/30/2019

Invariant Feature Mappings for Generalizing Affordance Understanding Using Regularized Metric Learning

This paper presents an approach for learning invariant features for obje...
research
03/25/2022

Neural Networks with Divisive normalization for image segmentation with application in cityscapes dataset

One of the key problems in computer vision is adaptation: models are too...
research
06/30/2020

A Framework for Learning Invariant Physical Relations in Multimodal Sensory Processing

Perceptual learning enables humans to recognize and represent stimuli in...

Please sign up or login with your details

Forgot password? Click here to reset