Emb Deployment Package for Image Inference using Faster-RCNN and custom classification networks
Project description
embpred_deploy Documentation
Overview
embpred_deploy is a deployment package for running inference using Faster-RCNN and custom classification networks. It supports various input modes, including timelapse inference, single-image inference, and multi-focal depth inference.
Installation
1. Create and activate a Conda environment with Python 3.12
To ensure compatibility, create a new Conda environment:
conda create -n embd python=3.12
conda activate embd
2. Install embpred_deploy via pip
Once the environment is set up, install the package:
pip install embpred_deploy
Important: The PyPI package does not include model weights due to size limitations. You must download the model weights separately (see Model Weights Installation below).
3. Install embpred_deploy via Git
Alternatively, if you prefer to pull the latest code directly from GitHub, run:
git clone https://github.com/berkyalcinkaya/embpred_deploy.git
cd embpred_deploy
pip install -e .
Model Weights Installation
⚠️ REQUIRED: Pretrained model weights are NOT included in the PyPI package due to size limitations. You must download them separately to use the package.
Model weights are stored on Google Drive. To use the latest trained models, download the weight files from:
Install Weights
After downloading the zip file, run the installation script to extract and move the weight files into the appropriate models folder:
python -m embpred_deploy.install_weights /path/to/your/downloaded_weights.zip
This script:
- Unzips the archive
- Moves any
.pthor.ptfiles to theembpred_deploy/modelsdirectory
Note: The embpred_deploy/models directory will be created automatically if it doesn't exist.
Usage Instructions
The inference script supports three modes:
1. Timelapse Inference
Use the --timelapse-dir argument to process a sequence of images. This mode supports two directory structures:
-
Single-image per timepoint
- All images are stored in one directory.
- Each image is loaded in grayscale and converted to RGB (duplicated channels).
-
Multiple focal depths per timepoint
- The images must be organized into three subdirectories, each representing a different focal depth.
- The script aligns images based on sorted filenames across subdirectories.
Example Command:
embpred_deploy --timelapse-dir /path/to/your/timelapse_data --model-name YOUR_MODEL_NAME
Output:
- Raw outputs:
raw_timelapse_outputs.npy - If
--postprocessis enabled:max_prob_classes.csvmax_prob_classes.png
2. Single Image Inference
Use the --single-image argument to run inference on a single image. The image is processed by duplicating its grayscale channel into RGB.
Example Command:
embpred_deploy --single-image /path/to/your/image.jpg --model-name YOUR_MODEL_NAME
3. Three-Focal Depth Inference
Provide three separate focal depth images using the --F_neg15, --F0, and --F15 arguments.
Example Command:
embpred_deploy --F_neg15 /path/to/F_neg15.jpg --F0 /path/to/F0.jpg --F15 /path/to/F15.jpg --model-name YOUR_MODEL_NAME
Assumptions & Notes
Input Image Format
- Single image inference:
- Image is loaded in grayscale and converted to 3-channel RGB.
- Timelapse mode:
- Image filenames must be sorted to ensure correct timepoint alignment.
Model Output
- Regular inference:
- The script maps raw model output to class labels.
- Timelapse inference:
- Raw probability vectors are returned unless
--postprocessis enabled.
- Raw probability vectors are returned unless
Dependencies
The package requires the following libraries (installed via pip or Conda):
pytorchtorchvisionopencv-pythonnumpymatplotlibtqdm
Ensure these dependencies are installed in your environment before running inference.
Development and Deployment
Setting up for Development
To set up the development environment:
# Clone the repository
git clone https://github.com/berkyalcinkaya/embpred_deploy.git
cd embpred_deploy
# Install development dependencies
pip install -r requirements-dev.txt
# Install the package in editable mode
pip install -e .
Deploying to PyPI
To deploy the package to PyPI:
-
Install deployment tools:
pip install -r requirements-dev.txt
-
Run the deployment script:
python build_and_deploy.py -
Or manually build and deploy:
# Clean previous builds rm -rf build/ dist/ *.egg-info/ # Build the package python -m build # Check the package python -m twine check dist/* # Upload to TestPyPI (recommended first) python -m twine upload --repository testpypi dist/* # Upload to PyPI (production) python -m twine upload dist/*
PyPI Credentials
You'll need to set up your PyPI credentials. Create a ~/.pypirc file:
[distutils]
index-servers =
pypi
testpypi
[pypi]
repository = https://upload.pypi.org/legacy/
username = your_username
password = your_password
[testpypi]
repository = https://test.pypi.org/legacy/
username = your_username
password = your_password
Support
For further details or troubleshooting, please refer to the source code or contact the maintainers.
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