An Overview of Datatype Quantization Techniques for Convolutional Neural Networks

08/22/2018
by   Ali Athar, et al.
0

Convolutional Neural Networks (CNNs) are becoming increasingly popular due to their superior performance in the domain of computer vision, in applications such as objection detection and recognition. However, they demand complex, power-consuming hardware which makes them unsuitable for implementation on low-power mobile and embedded devices. In this paper, a description and comparison of various techniques is presented which aim to mitigate this problem. This is primarily achieved by quantizing the floating-point weights and activations to reduce the hardware requirements, and adapting the training and inference algorithms to maintain the network's performance.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/01/2018

Binarized Convolutional Neural Networks for Efficient Inference on GPUs

Convolutional neural networks have recently achieved significant breakth...
research
09/29/2018

NICE: Noise Injection and Clamping Estimation for Neural Network Quantization

Convolutional Neural Networks (CNN) are very popular in many fields incl...
research
05/30/2015

Recognition of convolutional neural network based on CUDA Technology

For the problem whether Graphic Processing Unit(GPU),the stream processo...
research
04/02/2021

Inference of Recyclable Objects with Convolutional Neural Networks

Population growth in the last decades has resulted in the production of ...
research
06/18/2020

Caffe Barista: Brewing Caffe with FPGAs in the Training Loop

As the complexity of deep learning (DL) models increases, their compute ...
research
05/28/2018

Convolutional neural network compression for natural language processing

Convolutional neural networks are modern models that are very efficient ...
research
08/23/2022

Adaptation of MobileNetV2 for Face Detection on Ultra-Low Power Platform

Designing Deep Neural Networks (DNNs) running on edge hardware remains a...

Please sign up or login with your details

Forgot password? Click here to reset