Lanternfly Image Classifier
This model is trained to classify images of spotted lanternflies vs. non-lanternfly objects using AutoGluon Multimodal.
It leverages the dataset rlogh/lanternfly-images, which contains two splits:
- augmented: 336 labeled images with various transformations
- original: 33 raw images
The goal of this project is to demonstrate how tabular + image data can be processed with AutoGluon and pushed to Hugging Face Hub.
Model Details
- Framework: AutoGluon Multimodal
- Backend: PyTorch
- Task: Binary Image Classification (lanternfly vs. non-lanternfly)
- License: MIT
Dataset
- Name:
rlogh/lanternfly-images - Splits:
augmented: 336 imagesoriginal: 33 images
- Classes:
lanternfly(positive class)other(negative class)
Training Setup
- Library: AutoGluon Multimodal
- Hardware: Google Colab GPU (Tesla T4)
- Augmentation: Used dataset-provided augmentations
- Hyperparameters: Default AutoGluon
fit()config with limited training time
Evaluation
The model was evaluated on the dataset splits. Reported metrics include:
Validation Accuracy: 76.47%
Accuracy: 0.5455
F1 Score: 0.3850
AI Usage
ChatGPT was used to draft and format this model card