The advantage of deep learning is that the analysis and learning of massive amounts of unsupervised data make it a beneficial tool for Big Data analysis. Convolution Neural Network (CNN) is a deep learning method that can be used to classify image, cluster them by similarity, and perform image recognition in the scene. This paper conducts a comparative study between three deep learning models, which are simple-CNN, AlexNet and GoogLeNet for Roman handwritten character recognition using Chars74K dataset. The produced results indicate that GooleNet achieves the best accuracy but it requires a longer time to achieve such result while AlexNet produces less accurate result but at a faster rate
The most efficient and beneficial mechanism to the feature of extracting data from an image, has bee...
Handwritten character recognition (HCR) is the detection of characters from images, documents and ot...
Deep learning has seen a resurgence in the machine learning community in the past decade. Research o...
Tifinagh handwritten character recognition has been a challenging problem due to the similarity and ...
Handwritten character or digit recognition involves automatically classifying handwritten character...
Neural networks have made big strides in image classification. Convolutional neural networks (CNN) w...
DoctorThis thesis proposes scene text recognition algorithms, and these algorithms are applied to th...
For image recognition CNN is the most popular learning model. The features like weight sharing strat...
In the field of Deep Learning for Computer Vision, scientists have made many enhancements that helpe...
Convolutional Neural Networks (CNN) have achieved huge popularity in solving problems in image analy...
In this study, we explore deep learning models for single-character Chinese character recognition ta...
Purpose: In this paper highlights the recognition of hand-written Content/character problems that ha...
In today’s world there have been various advancements in computing fields and as a result there is a...
International audienceOptical Character Recognition (OCR) systems have been designed to operate on t...
Image recognition applications have been increasingly gaining popularity, as computer hardware was g...
The most efficient and beneficial mechanism to the feature of extracting data from an image, has bee...
Handwritten character recognition (HCR) is the detection of characters from images, documents and ot...
Deep learning has seen a resurgence in the machine learning community in the past decade. Research o...
Tifinagh handwritten character recognition has been a challenging problem due to the similarity and ...
Handwritten character or digit recognition involves automatically classifying handwritten character...
Neural networks have made big strides in image classification. Convolutional neural networks (CNN) w...
DoctorThis thesis proposes scene text recognition algorithms, and these algorithms are applied to th...
For image recognition CNN is the most popular learning model. The features like weight sharing strat...
In the field of Deep Learning for Computer Vision, scientists have made many enhancements that helpe...
Convolutional Neural Networks (CNN) have achieved huge popularity in solving problems in image analy...
In this study, we explore deep learning models for single-character Chinese character recognition ta...
Purpose: In this paper highlights the recognition of hand-written Content/character problems that ha...
In today’s world there have been various advancements in computing fields and as a result there is a...
International audienceOptical Character Recognition (OCR) systems have been designed to operate on t...
Image recognition applications have been increasingly gaining popularity, as computer hardware was g...
The most efficient and beneficial mechanism to the feature of extracting data from an image, has bee...
Handwritten character recognition (HCR) is the detection of characters from images, documents and ot...
Deep learning has seen a resurgence in the machine learning community in the past decade. Research o...