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Section-B_Project

🧠 CNN for Image Classification (MNIST & Fashion-MNIST) πŸ“Œ Project Overview

This project implements a Convolutional Neural Network (CNN) for image classification tasks using the MNIST and Fashion-MNIST datasets. MNIST: 28Γ—28 grayscale images of handwritten digits (0–9). Fashion-MNIST: 28Γ—28 grayscale images of fashion items (shirts, shoes, bags, etc.) across 10 categories. The CNN model is designed to automatically learn and recognize patterns from raw pixel data, making it effective for identifying digits and fashion objects.

Team Information:

Name Institute Email
Niraj Band GHRCE niraj.band.it.@ghrce.raisoni.net
Tejaswini Badpaiya GHRCE tejaswini.badpaiya.it.@ghrce.raisoni.net
Swikruti Thantharate GHRCE swikruti.thantharate.ds@ghrce.raisoni.net
Riya Darda GHRCE riya.darda.it.@ghrce.raisoni.net
Sakshi Kadu GHRCE sakshi.kadu.it.@ghrce.raisoni.net
Sania Sheikh GHRCE sania.sheikh.it.@ghrce.raisoni.net

πŸ§‘β€πŸ« Mentor

Mr. Anirvinya Gururajan International Institute of Information Technology, Hyderabad, Telangana, India

βš™οΈ Features

Deep learning model using Convolutional Neural Networks (CNNs) Supports MNIST and Fashion-MNIST datasets High accuracy in recognizing handwritten digits and fashion items Easy to extend for other image classification tasks

πŸ“Š Datasets

MNIST: 60,000 training images + 10,000 testing images of digits (0–9). Fashion-MNIST: 60,000 training images + 10,000 testing images across 10 clothing categories. Both datasets are available in TensorFlow and PyTorch libraries.

πŸ“ˆ Results (Expected)

MNIST: >98% accuracy Fashion-MNIST: ~90% accuracy

✨ Made with passion by the GHRCE Team under the guidance of Mr. Anirvinya Gururajan