/Fruit-Recognizer

Built a fastai fruit recognition model for precise and efficient identification using advanced deep learning

Primary LanguageJupyter NotebookMIT LicenseMIT

Fruit-Recognizer

An image classification model from data collection, cleaning, model training, deployment and API integration.
The model can classify 20 different types of fruits.
The types are following:

  • Apple
  • Grape
  • Kiwi
  • Orange
  • Pineapple
  • Papaya
  • Watermelon
  • Lemon
  • Avocado
  • Raspberry
  • Lychee
  • Pear
  • Carambola
  • Mango
  • Banana
  • Cherry
  • Strawberry
  • Fig
  • Blueberry
  • Apricot

Dataset Preparation

Data Collection: Downloaded from DuckDuckGo using term name
DataLoader: Used fastai DataBlock API to set up the DataLoader.
Data Augmentation: fastai provides default data augmentation which operates in GPU.
Details can be found in Notebooks/Fruit_Recognizer.ipynb

Training and Data Cleaning

Training: Fine-tuned a resnet50 model for 5 epochs (3 times) and got upto ~84% accuracy.
Data Cleaning: This part took the highest time. Since I collected data from browser, there were many noises. Also, there were images that contained. I cleaned and updated data using fastai ImageClassifierCleaner. I cleaned the data each time after training or finetuning, except for the last time which was the final iteration of the model.

Model Deployment

I deployed to model to HuggingFace Spaces Gradio App. The implementation can be found in Deployment folder or here.

API integration with GitHub Pages

The deployed model API is integrated here in GitHub Pages Website. Implementation and other details can be found in Docs folder.