ARCHIVES

Research Article

Handwritten Digit Recognition using ML

Khadke Prajakta Santosh1 Abadane Rutuja Mahavir2 Mankar Sarita Sanjay3 Mhetar Krantikumar R4
1234Department of Information Technology, Sharad Institute of Technology Polytechnic, Yadrav, Kolhapur, Maharashtra, India.

Published Online: May-June 2022

Pages: 78-82

Cite this article

No DOI

Abstract

Abstract: Handwritten digit recognition (HDR) is the detection of digit from images, documents, car number plates and other sources and changes them in machine-readable shape for further processing. The accurate recognition of intricate-shaped compound handwritten digit is still a great challenge. Recent advances in convolution neural network (CNN) have made great progress in HDR (Handwritten Digit Recognition) by learning discriminatory characteristics from large amounts of raw data. In this paper, CNN is implemented to recognize the digits from a tested dataset. The main focus of this work is to investigate CNN capability to recognize the digit from the image, documented dataset and the accuracy of recognition with training and testing. CNN recognizes the digits by considering the forms and contrasting the features that differentiate among digits. Our CNN implementation is experimented with the dataset MNIST to obtain the accuracy of handwritten digits. Test result provides that an accuracy of 93.90% accuracy is obtained on 250 images with a training set of 1000 images from MNIST. The aim of this work is to review existing methods for the handwritten digit recognition problem using machine learning algorithms and implement one of them for a user-friendly web application. The main tasks the application provides a solution for are handwriting recognition based on touch input, handwriting recognition from live camera frames or a picture file, learning new characters, and learning interactively based on user's feedback on written format. The recognition model we have chosen is a multilayer perceptron’s, a feed forward artificial neural network (ANN), especially because of its high performance on nonlinearly separable problems. It has also proved powerful in OCR and ICR systems that could be seen as a further extension of this work. We had evaluated the perceptron's performance and configured its parameters in the Python programming language, after which we implemented the Web application using the same perception architecture, learning parameters and optimization algorithms. The application was then tested on a training set consisting of digits.

Related Articles

2022

A Review on Bamboo Reinforced Concrete Beam

2022

FARMERS AGRICULTURAL PORTAL

2022

Sentiment Analysis of Religious Tweets

2022

Enhancement of beam strength by using bamboo as reinforcement in place of steel bars

2022

A Review on Anomaly Detection using PYOD Package

2022

Traffic Rule Violation Detection system

Share Article

X
LinkedIn
Facebook
WhatsApp

Or copy link

https://theijire.com/archives/handwritten-digit-recognition-using-ml

*Instagram doesn't support direct link sharing from web. Copy the link and share it in your Instagram story or post.