Comparison of Neuronal Attention Models

12/07/2019
by   Mohamed Karim Belaid, et al.
26

Recent models for image processing are using the Convolutional neural network (CNN) which requires a pixel per pixel analysis of the input image. This method works well. However, it is time-consuming if we have large images. To increase the performance, by improving the training time or the accuracy, we need a size-independent method. As a solution, we can add a Neuronal Attention model (NAM). The power of this new approach is that it can efficiently choose several small regions from the initial image to focus on. The purpose of this paper is to explain and also test each of the NAM's parameters.

READ FULL TEXT

page 1

page 3

page 4

page 5

research
05/24/2021

Robust Watermarking using Diffusion of Logo into Autoencoder Feature Maps

Digital contents have grown dramatically in recent years, leading to inc...
research
10/12/2016

Fast Training of Convolutional Neural Networks via Kernel Rescaling

Training deep Convolutional Neural Networks (CNN) is a time consuming ta...
research
11/28/2021

Image preprocessing and modified adaptive thresholding for improving OCR

In this paper I have proposed a method to find the major pixel intensity...
research
04/20/2022

Complete identification of complex salt-geometries from inaccurate migrated images using Deep Learning

Delimiting salt inclusions from migrated images is a time-consuming acti...
research
12/03/2018

XNet: A convolutional neural network (CNN) implementation for medical X-Ray image segmentation suitable for small datasets

X-Ray image enhancement, along with many other medical image processing ...
research
04/01/2019

Palmprint image registration using convolutional neural networks and Hough transform

Minutia-based palmprint recognition systems has got lots of interest in ...
research
01/14/2020

Convolutional Mean: A Simple Convolutional Neural Network for Illuminant Estimation

We present Convolutional Mean (CM) - a simple and fast convolutional neu...

Please sign up or login with your details

Forgot password? Click here to reset