Structured Convolution Matrices for Energy-efficient Deep learning

06/08/2016
by   Rathinakumar Appuswamy, et al.
0

We derive a relationship between network representation in energy-efficient neuromorphic architectures and block Toplitz convolutional matrices. Inspired by this connection, we develop deep convolutional networks using a family of structured convolutional matrices and achieve state-of-the-art trade-off between energy efficiency and classification accuracy for well-known image recognition tasks. We also put forward a novel method to train binary convolutional networks by utilising an existing connection between noisy-rectified linear units and binary activations.

READ FULL TEXT
research
03/28/2016

Convolutional Networks for Fast, Energy-Efficient Neuromorphic Computing

Deep networks are now able to achieve human-level performance on a broad...
research
05/14/2018

Energy Efficient Hadamard Neural Networks

Deep learning has made significant improvements at many image processing...
research
07/23/2015

Deep Fishing: Gradient Features from Deep Nets

Convolutional Networks (ConvNets) have recently improved image recogniti...
research
09/12/2018

Higher-order Graph Convolutional Networks

Following the success of deep convolutional networks in various vision a...
research
05/05/2022

Spiking Graph Convolutional Networks

Graph Convolutional Networks (GCNs) achieve an impressive performance du...
research
02/24/2022

Highly-Efficient Binary Neural Networks for Visual Place Recognition

VPR is a fundamental task for autonomous navigation as it enables a robo...
research
04/09/2018

Bounds for Energy-Efficient Survivable IP Over WDM Networks With Network Coding

In this work, we establish analytic bounds for the energy efficiency of ...

Please sign up or login with your details

Forgot password? Click here to reset