Binary Weighted Memristive Analog Deep Neural Network for Near-Sensor Edge Processing

08/02/2018
by   Olga Krestinskaya, et al.
0

The memristive crossbar aims to implement analog weighted neural network, however, the realistic implementation of such crossbar arrays is not possible due to limited switching states of memristive devices. In this work, we propose the design of an analog deep neural network with binary weight update through backpropagation algorithm using binary state memristive devices. We show that such networks can be successfully used for image processing task and has the advantage of lower power consumption and small on-chip area in comparison with digital counterparts. The proposed network was benchmarked for MNIST handwritten digits recognition achieving an accuracy of approximately 90

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/31/2018

Learning in Memristive Neural Network Architectures using Analog Backpropagation Circuits

The on-chip implementation of learning algorithms would speed-up the tra...
research
11/14/2021

TMS-Crossbars with Tactile Sensing

The first stage of tactile sensing is data acquisition using tactile sen...
research
06/23/2016

Precise deep neural network computation on imprecise low-power analog hardware

There is an urgent need for compact, fast, and power-efficient hardware ...
research
12/16/2017

Mitigating Asymmetric Nonlinear Weight Update Effects in Hardware Neural Network based on Analog Resistive Synapse

Asymmetric nonlinear weight update is considered as one of the major obs...
research
01/17/2018

In-network Neural Networks

We present N2Net, a system that implements binary neural networks using ...
research
02/18/2022

PISA: A Binary-Weight Processing-In-Sensor Accelerator for Edge Image Processing

This work proposes a Processing-In-Sensor Accelerator, namely PISA, as a...
research
02/24/2016

On Study of the Binarized Deep Neural Network for Image Classification

Recently, the deep neural network (derived from the artificial neural ne...

Please sign up or login with your details

Forgot password? Click here to reset