tags:
- fastai
library_name: fastai
pipeline_tag: image-classification
license: openrail
RecycleTree - Materials Classification Model
RecycleTree is a project from CZ3002 Advanced Software Engineering in Nanyang Technological University. It aims to enable users to have a more informed recycling experience, from finding the nearest recycling bins, to checking whether the item they wish to recycle can indeed be recycled, to learning more about recycling and contamination in general.
The whole project can be found on GitHub
This image classification model in particular is to classify trash items into the following material classes:
- Paper
- Plastic
- Glass
- Metal
- Others
Training Data
The training dataset had around 5000 images across 5 classes, with each class having roughly the same distribution of images. The images were either scraped from Google image search, or obtained by ourselves in real life.
Training Procedure
As the purpose of this model was to act just as a proof of concept for quick prototyping of RecycleTree, I opted to use the fast.ai library and a simple model architecture of ResNet34. The training procedure is following the recommendations from fast.ai
Other Models
There are also other models in the RecycleTree model series:
- Plastic Classification Model - Classification of images of plastic trash into different classes
- Paper Classification Model - Classification of images of paper trash into different classes
- Metal Classification Model - Classification of images of metal trash into different classes
- Glass Classification Model - Classification of images of glass trash into different classes
- Others Classification Model - Classification of images of other (not paper, metal, glass, or plastic) trash into different classes