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---
title: Insect Detection
emoji: π
colorFrom: yellow
colorTo: green
sdk: docker
app_file: Insect_HFspace_Streamlit_App.py
pinned: false
license: mit
tags:
- computer-vision
- image-classification
- insect-classification
- deep-learning
- tensorflow
- mobilenet
- efficientnet
- resnet
- inception
---
# π¦ Multi-Model Insect Classification System - A Web/Mobile App
### Developed by Dr. Thyagharajan K K
## Description
AI-powered insect classification application featuring multiple state-of-the-art deep learning models. Upload images to identify insect species with confidence scores and top-3 predictions.
## Features
- π― Multiple pre-trained models (Inception V3, EfficientNet, ResNet50)
- πΈ Upload custom images or use sample test images
- π Confidence scores with top-3 predictions
- π Fast inference with model caching
- π± Responsive design for web and mobile
## Models Available
- **Inception V3** - High accuracy, balanced performance
- **EfficientNet B0** - Efficient and lightweight
- **ResNet50** - Deep residual learning
- (More models coming soon...)
## How to Use
1. Select a model from the dropdown
2. Upload an insect image or choose from sample images
3. Click "Predict" to get classification results
4. View predicted class with confidence score
## Technical Details
- **Framework:** TensorFlow/Keras
- **Input Size:** 300Γ300 pixels
- **Interface:** Streamlit
- **Hosted on:** Hugging Face Spaces
## License
This project is licensed under the MIT License - see the LICENSE file for details.
## Citation
If you use this application in your research or educational projects, please provide appropriate attribution.
## Contact
For questions or collaboration opportunities, please open a discussion in this Space. |