Open Source Deep Learning Serving System with Web Interface
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Updated
Dec 2, 2023 - JavaScript
Open Source Deep Learning Serving System with Web Interface
基于 Pytorch 的垃圾识别与分类。本项目源于浙江大学光电学院课程设计。(程序仅供参考,很久没关注这方面内容了,为避免误导,相关问题不作回答)
A list of useful resources in the trash classification and detection (mainly plastic), such as datasets, papers, links to open source projects
Managing waste in fun and easy way with AI ♻️😊🤖
Ramudroid, autonomous solar-powered robot to clean roads, realtime object detection and webrtc based streaming
Python notebook about garbage detection based on convolutional neural network
A machine learning tool built with TensorFlow and the VGG16 model. It classifies waste items from images, assisting in efficient recycling. Users upload waste images, and the system identifies the waste type.
Official Droidrush repository of NPDevs team (Avishkar-2019--Annual Techfest of MNNIT Allahabad)
Welcome to the repository of our garbage classification project! We have developed a model using PyTorch and EfficientNet-B4 that classifies garbage into twelve different types. The model has achieved an impressive accuracy of 98.45%.
Metis project 6/7
This repository contains garbage classification models built using PyTorch, capable of accurately classifying garbage into different categories. It includes two versions of the model, one with 6 classes & the other with 12 classes, to cater to different needs. Change branch to "testbr" to see the 12-class model in the "Extra" directory.
Self-collected trash dataset used in AlphaTrash project. Contains 5600+ images of trash gathered in Thailand, sorted into general, metal, organic, paper, and plastic wastes.
This project implements a custom CNN model for waste classification (battery, plastic, etc.) into 12 categories. Trained on image data, it achieves 80.03% accuracy.
🥡一个开源的「垃圾分类」小程序。
FastAPI-based API system for ML garbage detection in 6 categories. Python-powered solution for efficient waste classification and management.
A Pytorch project for garbage classification using the EfficientNet-B6 model to achive a 95.78% accuracy on the test set. 😊
PeppeRecycle Android
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