46 results for “topic:waste-classification”
Waste image classification into organic or recyclable ones with CNN algorithm.
No description provided.
A NodeMCU-ML based project which performs extensive waste classification by leveraging ResNet50's precision and ESP8266's extensibility.
AI-powered waste classification system using deep learning, Combines a custom CNN and EfficientNet (transfer learning). Achieves 99% training and 95% validation accuracy. Classifies images into cardboard, glass, metal, paper, plastic, and trash. Includes prediction, evaluation, and visualization tools.
This project automates trash sorting using a Raspberry Pi-controlled robotic arm, leveraging TensorFlow Lite and OpenCV for real-time classification of paper, plastic, and metal waste.
This repo contains all the source code and obtained data for the waste classification
an object detection model to find waste on the fly
Waste classification system using MobileNetV2 transfer learning. Flask web app with upload, camera capture, and batch processing for 7 waste categories
Synthetic Municipal Solid Waste Generator for AI-powered Waste Recognition System
Waste Classification into biodegradable, non-recyclable, recyclable and reusable.
EcoWaste AI uses MobileNetV2 to classify waste as organic or recyclable and a RandomForest model to estimate CO₂ savings based on item weight. It helps users make better disposal choices by providing predictions, confidence scores, carbon-impact estimates, and simple eco-tips through an easy interactive interface.
Web app basata su intelligenza artificiale per identificare, catalogare e classificare correttamente i rifiuti.
Waste image classification using CNN (MobileNetV2 & DenseNet121) on the TrashNet dataset with augmentation and class weighting.
EcoGuardian is a mobile app that uses AI-driven image recognition to classify waste into recyclables, compost, and landfill categories.
End-to-end waste product classification system using transfer learning (VGG16) and Flask for real-time image inference.
Exploring the use of Vision Transformers (ViT) for waste classification
This project implements a deep learning–based garbage classification system using a custom Convolutional Neural Network (CNN). It automatically classifies waste images into recyclable categories, supporting efficient and smart waste segregation through AI.
A deep learning project that classifies garbage into six categories (cardboard, glass, metal, paper, plastic, and trash) using a Convolutional Neural Network (CNN). Includes a complete frontend-backend system built with Flask for real-time image classification.
Trash Classification adalah proyek Computer Vision untuk mengklasifikasikan jenis sampah menggunakan model deep learning berbasis CNN. Model ini dirancang untuk mengenali berbagai kategori sampah secara akurat dan efisien. Dikembangkan untuk mendukung pengelolaan sampah. Proyek ini dikembangkan untuk ajang Penyisihan Hackta AI 2026
Edge AI Prototype enhances sustainability via AI. Task 1 classifies recyclables (Organic and Inorganic) using MobileNetV2. Task 2 predicts crop yields with Random Forest. Task 3 analyzes AI ethics in medicine. Uses TensorFlow, Scikit-learn, Pandas, and TFLite.
♻️ Classify waste images into categories using transfer learning and deploy with Flask for real-time predictions, enhancing waste management automation.
HR-ViT: A hybrid ResNet50–Vision Transformer model for six-class municipal waste classification (plastic, paper, metal, glass, organic, batteries), achieving 98.27% accuracy and designed for real-world recycling systems.
EcoLens — AI-powered waste classifier with gamified environmental impact tracking
AI-powered Waste Classification system using YOLOv11 Small Optimized for autonomous recycling robots an d edge devices. // Otonom geri dönüşüm robotları ve uç cihazlar için optimize edilmiş, YOLOv11 Small kullanan yapay zeka tabanlı atık sınıflandırma sistemi.
CNN for land waste classification
Sistema End-to-End de classificação de reciclagem usando Deep Learning (ResNet50), com API em FastAPI e interface web em Streamlit.
Environmental AI research leveraging Computer Vision for automated waste classification and sorting.
Ecozyne is committed to sustainability.
real time waste classification using artificial neural network
An AI/ML system designed to optimize smart factory operations by streamlining production lines, reducing waste, and automating material recycling.