This paper aims to determine the efficiency in classifying and recognizing Thai digit handwritten using convolutional neural networks (CNN). We created a new dataset called the Thai digit dataset. The performance test was divided into two parts: the first part determines the exact number of epochs, and the second part examines the occurrence of overfits in the model with Keras library's EarlyStoping() function, processed through cloud computing with Google Colaboratory, and used a Python programming language. The main parameters for the model were a dropout of 0.75, minibatch size of 128, the learning rate of 0.0001, and using an Adam optimizer. This study found the model's predictive accuracy was 96.88 and the loss was 0.1075. The results ...
Tifinagh handwritten character recognition has been a challenging problem due to the similarity and ...
Purpose: In this paper highlights the recognition of hand-written Content/character problems that ha...
Deep learning methods have become the key ingredient in the field of computer vision; in particular,...
Project deals with the applications of ML (Machine Learning ) techniques for detecting Hand written ...
This study aims to develop a Convolutional Neural Network (CNN) Model for the imposition of handwri...
Technological development in recent years has generated the constant need to digitalize and analyze ...
An enormous number of CNN classification algorithms have been proposed in the literature. Neverthele...
How does a computer recognize individual letters and numbers? One method to approach this problem is...
The recognition of handwritten digits has aroused the interest of the scientific community and is th...
Handwritten character or digit recognition involves automatically classifying handwritten character...
Handwriting recognition is one of the core applications of computer vision for real-word problems an...
Humans can see and visually sense the world around them by using their eyes and brains Computer vis...
In this paper we present a method for the recognition of handwritten digits and a practical implemen...
Neural networks have made big strides in image classification. Convolutional neural networks (CNN) w...
Pattern recognition, including handwriting recognition, has become increasingly common in everyday l...
Tifinagh handwritten character recognition has been a challenging problem due to the similarity and ...
Purpose: In this paper highlights the recognition of hand-written Content/character problems that ha...
Deep learning methods have become the key ingredient in the field of computer vision; in particular,...
Project deals with the applications of ML (Machine Learning ) techniques for detecting Hand written ...
This study aims to develop a Convolutional Neural Network (CNN) Model for the imposition of handwri...
Technological development in recent years has generated the constant need to digitalize and analyze ...
An enormous number of CNN classification algorithms have been proposed in the literature. Neverthele...
How does a computer recognize individual letters and numbers? One method to approach this problem is...
The recognition of handwritten digits has aroused the interest of the scientific community and is th...
Handwritten character or digit recognition involves automatically classifying handwritten character...
Handwriting recognition is one of the core applications of computer vision for real-word problems an...
Humans can see and visually sense the world around them by using their eyes and brains Computer vis...
In this paper we present a method for the recognition of handwritten digits and a practical implemen...
Neural networks have made big strides in image classification. Convolutional neural networks (CNN) w...
Pattern recognition, including handwriting recognition, has become increasingly common in everyday l...
Tifinagh handwritten character recognition has been a challenging problem due to the similarity and ...
Purpose: In this paper highlights the recognition of hand-written Content/character problems that ha...
Deep learning methods have become the key ingredient in the field of computer vision; in particular,...