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Plastic Usage Classification

Introduction

The purpose of this project is to quantify the amount of plastic generated through grocery store sales. The project aims to develop a model capable of accurately classifying the amount of plastic in grocery store products using deep learning techniques.

Objectives

The primary objective of this project is to develop a model capable of accurately classifying the labeled product images according to the amount of plastic in them. The team will develop a set of 6,000 product images that will be classified into four categories: no-plastic, some-plastic, heavy-plastic, and no-image (not a product). In addition, they will collect 350,000 unlabeled images of products in-situ and aim to classify them according to the amount of plastic present.

Contributors

Dhruv Kamalesh Kumar - kamaleshkumar.d@northeastern.edu

Yalala Mohit - mohit.y@northeastern.edu

URL's

Github Code - https://github.com/DB-25/plastic_usage_classification (Private)

PPT - https://docs.google.com/presentation/d/1LfYQy4zYn1mx-We8hg889fRaw2H4y0gcDv_2w9NCdpI/edit?usp=sharing

Video Presentation - https://drive.google.com/file/d/1cBOUYYvzQw0MOCYVA9kZck_UHCKLcygV/view?usp=sharing

About

🌍 Plastic Usage Classification: A Vision for Sustainability ♻️ Delve into my project focused on quantifying plastic usage in grocery items through innovative deep learning techniques. Witness the journey of developing a model to accurately categorize product images based on their plastic content, contributing to a greener future.

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