Understanding of a convolutional neural network | IEEE Conference Publication | IEEE Xplore

Understanding of a convolutional neural network

Abstract: The term Deep Learning or Deep Neural Network refers to Artificial Neural Networks (ANN) with multi layers. Over the last few decades, it has been considered to be one of the most powerful tools, and has become very popular in the literature as it is able to handle a huge amount of data. The interest in having deeper hidden layers has recently begun to surpass classical methods performance in different fields; especially in pattern recognition. One of the most popular deep neural networks is the Convolutional Neural Network (CNN). It take this name from mathematical linear operation between matrixes called convolution. CNN have multiple layers; including convolutional layer, non-linearity layer, pooling layer and fully-connected layer. The convolutional and fully-connected layers have parameters but pooling and non-linearity layers don't have parameters. The CNN has an excellent performance in machine learning problems. Specially the applications that deal with image data, such as largest image classification data set (Image Net), computer vision, and in natural language processing (NLP) and the results achieved were very amazing. In this paper we will explain and define all the elements and important issues related to CNN, and how these elements work. In addition, we will also state the parameters that effect CNN efficiency. This paper assumes that the readers have adequate knowledge about both machine learning and artificial neural network.

Note: As originally published there is an error in this document. Author name "Saad AL-ZAWI" on the document submitted for publication was instead intended to be "Saad AL-AZAWI," as noted here. The metadata record has been updated to reflect the correct name but the PDF remains unchanged.

Article #:
Date of Conference: 21-23 August 2017
Date Added to IEEE Xplore: 08 March 2018
ISBN Information:
Electronic ISBN: 978-1-5386-1949-0
USB ISBN: 978-1-5386-1948-3
Print on Demand(PoD) ISBN: 978-1-5386-1950-6
INSPEC Accession Number:
Persistent Link: https://ieeexplore.ieee.org/servlet/opac?punumber=8303173
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Publisher: IEEE