Frechet Coefficient
Project description
Frechet Coefficient
Frechet Coefficient is a Python package for calculating various similarity metrics between images, including Frechet Distance, Frechet Coefficient, and Hellinger Distance. It leverages pre-trained models from TensorFlow's Keras applications and Torchvision to extract features from images.
Table of Contents
Installation
To install the package, use the following command:
pip install frechet-coefficient # if you have TensorFlow or PyTorch
pip install frechet-coefficient[tensorflow] # for TensorFlow support
pip install frechet-coefficient[torch] # for PyTorch support
Requirements:
- Python 3.10-3.12
- TensorFlow 2.18.* OR PyTorch 2.5.*
- imageio 2.36.*
- numpy >= 2.0.0
Usage
You can use the command-line interface (CLI) to calculate similarity metrics between two directories of images.
frechet-coefficient <path_to_directory1> <path_to_directory2> --metric <metric> [options]
Remember to use enough images to get a meaningful result. If your datasets are small, consider using --random_patches
argument to calculate metrics on random patches of images.
Positional Arguments
dir1
: Path to the first directory of images.dir2
: Path to the second directory of images.
Options
--metric
: Metric to calculate (fd, fc, hd).--batch_size
: Batch size for processing images.--num_of_images
: Number of images to load from each directory.--as_gray
: Load images as grayscale.--random_patches
: Calculate metrics on random patches of images.--patch_size
: Size of the random patches.--num_of_patch
: Number of random patches to extract.--model
: Pre-trained model to use as feature extractor (inceptionv3, resnet50v2, xception, densenet201, convnexttiny, efficientnetv2s).--verbose
: Enable verbose output.
Example CLI Commands
To calculate the Frechet Distance between two sets of images, use the following command:
frechet-coefficient images/set1 images/set2 --metric fd
To calculate the Frechet Coefficient between two sets of images using the InceptionV3 model, use the following command:
frechet-coefficient images/set1 images/set2 --metric fc --model inceptionv3
To calculate the Hellinger Distance between two sets of images using random patches, use the following command:
frechet-coefficient images/set1 images/set2 --metric hd --random_patches --patch_size 128 --num_of_patch 10000
Python Code
You can also use python code to calculate similarity metrics between two sets of images.
import numpy as np
from typing import List
from frechet_coefficient import ImageSimilarityMetrics, load_images
# Initialize the ImageSimilarityMetrics class
ism = ImageSimilarityMetrics(model='inceptionv3', verbose=0)
images_1: List[np.ndarray] = load_images(path=...) # shape: (num_of_images, height, width, channels)
images_2: List[np.ndarray] = load_images(path=...) # shape: (num_of_images, height, width, channels)
# Calculate Frechet Distance
fd = ism.calculate_frechet_distance(images_1, images_2, batch_size=4)
# Calculate Frechet Coefficient
fc = ism.calculate_frechet_coefficient(images_1, images_2, batch_size=4)
# Calculate Hellinger Distance
hd = ism.calculate_hellinger_distance(images_1, images_2, batch_size=4)
# Calculate means vectors and covariance matrices
mean_1, cov_1 = ism.derive_mean_cov(images_1, batch_size=4)
mean_2, cov_2 = ism.derive_mean_cov(images_2, batch_size=4)
# Calculate metrics using mean vectors and covariance matrices
fd = ism.calculate_fd_with_mean_cov(mean_1, cov_1, mean_2, cov_2)
fc = ism.calculate_fc_with_mean_cov(mean_1, cov_1, mean_2, cov_2)
hd = ism.calculate_hd_with_mean_cov(mean_1, cov_1, mean_2, cov_2)
You can also calculate similarity metrics between two sets of images using random patches.
import numpy as np
from typing import List
from frechet_coefficient import ImageSimilarityMetrics, crop_random_patches, load_images
# Initialize the ImageSimilarityMetrics class
ism = ImageSimilarityMetrics(model='inceptionv3', verbose=0)
images_1: List[np.ndarray] = load_images(path=...) # shape: (num_of_images, height, width, channels)
images_2: List[np.ndarray] = load_images(path=...) # shape: (num_of_images, height, width, channels)
# Crop random patches from images
images_1_patches = crop_random_patches(images_1, size=(128, 128), num_of_patch=10000)
images_2_patches = crop_random_patches(images_2, size=(128, 128), num_of_patch=10000)
# Calculate Frechet Distance
fd = ism.calculate_frechet_distance(images_1_patches, images_2_patches, batch_size=4)
# Calculate Frechet Coefficient
fc = ism.calculate_frechet_coefficient(images_1_patches, images_2_patches, batch_size=4)
# Calculate Hellinger Distance
hd = ism.calculate_hellinger_distance(images_1_patches, images_2_patches, batch_size=4)
Metrics
fd
: Frechet Distance (with InceptionV3 model is equivalent to FID)fc
: Frechet Coefficienthd
: Hellinger Distance
The Hellinger Distance is numerically unstable for small datasets. The main reason is poorly estimated covariance matrices. To mitigate this issue, you can use the --random_patches
argument to calculate metrics on random patches of images with a very high number of patches (e.g., 50000).
Models
Model | Input size | Output size | Parameters | Keras Applications | Torchvision |
---|---|---|---|---|---|
InceptionV3 | 299x299 | 2048 | 23.9M | inceptionv3 | inception |
ResNet50v2 | 224x224 | 2048 | 25.6M | resnet | not available in PyTorch |
Xception | 224x224 | 2048 | 22.9M | xception | not available in PyTorch |
DenseNet201 | 224x224 | 1920 | 20.2M | densenet | densenet |
ConvNeXtTiny | 224x224 | 768 | 28.6M | convnext | convnext |
EfficientNetV2S | 384x384 | 1280 | 21.6M | efficientnet | efficientnetv2 |
PyTorch
To set PyTorch device, use the following code:
import os
os.environ["FRECHET_COEFFICIENT_DEVICE_TORCH"] = "cuda" # or "cpu"
# import the package after setting the device
Features
- Calculate Frechet Distance, Frechet Coefficient, and Hellinger Distance between two sets of images.
- Support for multiple pre-trained models.
- Option to calculate metrics on random patches of images.
Citation
If you use this package in your research, please consider citing the following paper:
- not available yet
License
This project is licensed under the MIT License. See the [LICENSE
] file for details.
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.
Source Distribution
Built Distribution
File details
Details for the file frechet_coefficient-2.0.2.tar.gz
.
File metadata
- Download URL: frechet_coefficient-2.0.2.tar.gz
- Upload date:
- Size: 12.2 kB
- Tags: Source
- Uploaded using Trusted Publishing? Yes
- Uploaded via: twine/5.1.1 CPython/3.12.7
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 42079d1aa028d3616150103109cbad55efb2c49a4c26b7f46614f8d9bc5e2e29 |
|
MD5 | caed66d733cd12d916d84564ca741c98 |
|
BLAKE2b-256 | 4f25cad45784aaddb1d452b70fab1e82c25f7b83bc1d7403c696a0fdf9134b69 |
Provenance
The following attestation bundles were made for frechet_coefficient-2.0.2.tar.gz
:
Publisher:
github-release-workflow.yml
on adriankucharski/frechet-coefficient
-
Statement type:
https://in-toto.io/Statement/v1
- Predicate type:
https://docs.pypi.org/attestations/publish/v1
- Subject name:
frechet_coefficient-2.0.2.tar.gz
- Subject digest:
42079d1aa028d3616150103109cbad55efb2c49a4c26b7f46614f8d9bc5e2e29
- Sigstore transparency entry: 149649093
- Sigstore integration time:
- Predicate type:
File details
Details for the file frechet_coefficient-2.0.2-py3-none-any.whl
.
File metadata
- Download URL: frechet_coefficient-2.0.2-py3-none-any.whl
- Upload date:
- Size: 14.3 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? Yes
- Uploaded via: twine/5.1.1 CPython/3.12.7
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 28cba35223e89ad663566d8583106c9bca48223eae5a9b30d21bbf10407ef740 |
|
MD5 | 620d7bb9cb3f9f3eb60a12dc207d2d67 |
|
BLAKE2b-256 | 2265598afe4e7b599d6730fd0b5af33ae31a5f43171d7c903a5b508d44e89d96 |
Provenance
The following attestation bundles were made for frechet_coefficient-2.0.2-py3-none-any.whl
:
Publisher:
github-release-workflow.yml
on adriankucharski/frechet-coefficient
-
Statement type:
https://in-toto.io/Statement/v1
- Predicate type:
https://docs.pypi.org/attestations/publish/v1
- Subject name:
frechet_coefficient-2.0.2-py3-none-any.whl
- Subject digest:
28cba35223e89ad663566d8583106c9bca48223eae5a9b30d21bbf10407ef740
- Sigstore transparency entry: 149649094
- Sigstore integration time:
- Predicate type: