# image_embeddings
Project description
image_embeddings
Using efficientnet to provide embeddings for retrieval.
Why this repo ? Embeddings are a widely used technique that is well known in scientific circles. But it seems to be underused and not very well known for most engineers. I want to show how easy it is to represent things as embeddings, and how many application this unlocks.
Workflow
- download some pictures
- run inference on them to get embeddings
- simple knn example, to understand what's the point : click on some pictures and see KNN
Simple Install
Run pip install image_embeddings
Example workflow
- run
image_embeddings save_examples_to_folder --images_count=1000 --output_folder=tf_flower_images
, this will retrieve 1000 image files from https://www.tensorflow.org/datasets/catalog/tf_flowers (but you can also pick any other dataset) - produce tf records with
image_embeddings write_tfrecord --image_folder=tf_flower_images --output_folder=tf_flower_tf_records --shards=10
- run the inference with
image_embeddings run_inference --tfrecords_folder=tf_flower_tf_records --output_folder=tf_flower_embeddings
- run a random knn search on them
image_embeddings random_search --path=tf_flower_embeddings
$ image_embeddings random_search --path=tf_flower_embeddings
image_roses_261
160.83 image_roses_261
114.36 image_roses_118
102.77 image_roses_537
92.95 image_roses_659
88.49 image_roses_197
Explore the Simple notebook for more details.
You can try it locally or try it in colab
The From scratch notebook provides an explanation on how to build this from scratch.
API
image_embeddings.downloader
Downloader from tensorflow datasets. Any other set of images could be used instead
image_embeddings.downloader.save_examples_to_folder(output_folder, images_count=1000, dataset="tf_flowers")
Save https://www.tensorflow.org/datasets/catalog/tf_flowers to folder Also works with other tf datasets
image_embeddings.inference
Create tf recors from images files, and apply inference with an efficientnet model. Other models could be used.
image_embeddings.inference.write_tfrecord(image_folder, output_folder, num_shards=100)
Write tf records from an image folders
image_embeddings.inference.run_inference(tfrecords_folder, output_folder, batch_size=1000)
Run inference on provided tf records and save to folder the embeddings
image_embeddings.knn
Convenience methods to read, build indices and apply search on them. These methods are provided as example. Use faiss directly for bigger datasets.
image_embeddings.knn.read_embeddings(path)
Run embeddings from path and return a tuple with
- embeddings as a numpy matrix
- an id to name dictionary
- a name to id dictionary
image_embeddings.knn.build_index(emb)
Build a simple faiss inner product index using the provided matrix of embeddings
image_embeddings.knn.search(index, id_to_name, emb, k=5)
Search the query embeddings and return an array of (distance, name) images
image_embeddings.knn.display_picture(image_path, image_name)
Display one picture from the given path and image name in jupyter
image_embeddings.knn.display_results(image_path, results)
Display the results from search method
image_embeddings.knn.random_search(path)
Load the embeddings, apply a random search on them and display the result
Advanced Installation
Prerequisites
Make sure you use python>=3.6
and an up-to-date version of pip
and
setuptools
python --version
pip install -U pip setuptools
It is recommended to install image_embeddings
in a new virtual environment. For
example
python3 -m venv image_embeddings_env
source image_embeddings_env/bin/activate
pip install -U pip setuptools
pip install image_embeddings
Using Pip
pip install image_embeddings
From Source
First, clone the image_embeddings
repo on your local machine with
git clone https://github.com/rom1504/image_embeddings.git
cd image_embeddings
make install
To install development tools and test requirements, run
make install-dev
Test
To run unit tests in your current environment, run
make test
To run lint + unit tests in a fresh virtual environment, run
make venv-lint-test
Lint
To run black --check
:
make lint
To auto-format the code using black
make black
Tasks
- simple downloader in python
- simple inference in python using https://github.com/qubvel/efficientnet
- build python basic knn example using https://github.com/facebookresearch/faiss
- build basic ui using lit element and some brute force knn to show what it does, put in github pages
- use to illustrate embeddings blogpost
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.