Here's a complete and enhanced version of your Gradio interface documentation for the SGDNet model. This documentation can be part of your model card on Hugging Face or included as a README.md
in your project repository. It provides clear instructions on setup, usage, and how to interact with the model through Gradio.
SGDNet Gradio Interface
This is a Gradio interface for the SGDNet model, designed to extract glacier boundaries from multisource remote sensing data. The interface provides a user-friendly method to upload satellite images and visualize the predicted glacier boundaries.
Setup Instructions
Follow these steps to get the Gradio interface up and running on your local machine:
Prerequisites
Ensure you have Python installed on your system. The interface is built using Gradio, and the model is implemented in TensorFlow.
Installation
Clone the repository: Ensure you have git installed and then clone the repository containing the SGDNet model and the Gradio interface code.
git clone https://huggingface.co/your_username/SGDNet-gradio cd SGDNet-gradio
Install the required packages: Use pip to install the required Python packages from the
requirements.txt
file.pip install -r requirements.txt
Running the Interface
Start the Gradio app: Run the Gradio interface using the command below. This command executes the Python script that launches the Gradio interface.
python gradio_app.py
Access the Interface: Open your web browser and navigate to the URL provided in the command line output (typically
http://127.0.0.1:7860
). This URL hosts your interactive Gradio interface.
How to Use the Interface
- Upload Image: Click on the upload area or drag and drop an image file to upload a satellite image of a glacier.
- Submit Image: After uploading the image, click the "Predict" button to process the image through the SGDNet model.
- View Results: The interface will display the original image alongside the glacier boundary predictions, allowing you to compare and analyze the results.
Features
- Interactive Uploads: Users can easily upload images through a simple web interface.
- Real-time Predictions: The model processes images and provides predictions in real-time.
- Visual Comparisons: Directly compare the uploaded images with their prediction outputs.