Strengthening the Training of Convolutional Neural Networks By Using Walsh Matrix

03/31/2021
by   Tamer Olmez, et al.
16

DNN structures are continuously developing and achieving high performances in classification problems. Also, it is observed that success rates obtained with DNNs are higher than those obtained with traditional neural networks. In addition, one of the advantages of DNNs is that there is no need to spend an extra effort to determine the features; the CNN automatically extracts the features from the dataset during the training. Besides their benefits, the DNNs have the following three major drawbacks among the others: (i) Researchers have struggled with over-fitting and under-fitting issues in the training of DNNs, (ii) determination of even a coarse structure for the DNN may take days, and (iii) most of the time, the proposed network structure is too large to be too bulky to be used in real time applications. We have modified the training and structure of DNN to increase the classification performance, to decrease the number of nodes in the structure, and to be used with less number of hyper parameters. A minimum distance network (MDN) following the last layer of the convolutional neural network (CNN) is used as the classifier instead of a fully connected neural network (FCNN). In order to strengthen the training of the CNN, we suggest employing Walsh function. We tested the performances of the proposed DNN (named as DivFE) on the classification of ECG, EEG, heart sound, detection pneumonia in X-ray chest images, detection of BGA solder defects, and patterns of benchmark datasets (MNIST, IRIS, CIFAR10 and CIFAR20). In different areas, it has been observed that a higher classification performance was obtained by using the DivFE with less number of nodes.

READ FULL TEXT

page 18

page 19

page 21

page 23

page 25

research
03/19/2021

Classification of Motor Imagery EEG Signals by Using a Divergence Based Convolutional Neural Network

Deep neural networks (DNNs) are observed to be successful in pattern cla...
research
01/08/2022

Classification of Hyperspectral Images by Using Spectral Data and Fully Connected Neural Network

It is observed that high classification performance is achieved for one-...
research
05/04/2021

Performance Evaluation of Deep Convolutional Maxout Neural Network in Speech Recognition

In this paper, various structures and methods of Deep Artificial Neural ...
research
03/08/2020

Implementation of Deep Neural Networks to Classify EEG Signals using Gramian Angular Summation Field for Epilepsy Diagnosis

This paper evaluates the approach of imaging timeseries data such as EEG...
research
08/05/2022

Time-Frequency Distributions of Heart Sound Signals: A Comparative Study using Convolutional Neural Networks

Time-Frequency Distributions (TFDs) support the heart sound characterisa...
research
03/16/2021

Parareal Neural Networks Emulating a Parallel-in-time Algorithm

As deep neural networks (DNNs) become deeper, the training time increase...
research
12/20/2021

Skin lesion segmentation and classification using deep learning and handcrafted features

Accurate diagnostics of a skin lesion is a critical task in classificati...

Please sign up or login with your details

Forgot password? Click here to reset