SnugShopper
Web2024

SnugShopper

AI-driven apparel fitting system that won the Oracle APEX Hackathon.

About This Project

SnugShopper is an intelligent apparel-fitting solution designed to reduce e-commerce return rates caused by inconsistent sizing standards. The system automatically extracts garment measurements from seller-uploaded product images using computer vision techniques such as OpenCV and MediaPipe, eliminating the need for manual measurement entry or reliance on brand-specific sizing charts.

Customers upload their own photos, and SnugShopper calculates key body measurements to generate a visual fitting analysis. This report highlights how well a garment matches the user's body dimensions and provides personalized size recommendations, helping shoppers make confident, accurate purchase decisions.

Built using Oracle APEX for the front-end, Python + Flask for backend processing, and Oracle Database for secure data storage, SnugShopper aims to create a more inclusive, transparent, and sustainable shopping experience—especially for senior users and those who are not tech-savvy.

By enabling accurate fits before purchase, it helps reduce carbon footprint, improve customer satisfaction, and enhance overall trust in apparel e-commerce.

🏆 Winner — Oracle APEX Hackathon

Project Info

Year2024
CategoryWeb
Technologies7

Demo Video

Key Features

Automatic garment measurement extraction from images
Body measurement calculation from user photos
Visual fitting analysis report
Personalized size recommendations
Accessible design for all users
Reduces e-commerce return rates

Technologies Used

Oracle APEXPythonFlaskOracle DatabaseOpenCVMediaPipeComputer Vision