Python bindings for NBIS fingerprint processing using Rust + UniFFI
Project description
NBIS-rs
This is a Rust/Python binding to the NIST Biometric Image Software (NBIS) library, which is used for processing biometric images, particularly in the context of fingerprint recognition.
For convenience, this library also binds to the NIST Fingerprint Image Quality (NFIQ) version 2.
Features
- Bindings to NBIS functions for minutia extraction, matching
- Exports minutiae templates in ISO/IEC 19794-2:2005 format
- Matches minutiae templates against each other using the NBIS Bozorth3 algorithm
- Provides support for NFIQ2 quality assessment
Building from source
Native dependencies (OpenCV 4.13, Rust 1.95 / edition 2024, CMake, C++ toolchain) are required. See DEPENDENCIES.md.
# macOS
./scripts/install-deps-macos.sh
# Linux (Debian/Ubuntu)
./scripts/install-deps-linux.sh
cargo build --release
cargo test
make python # optional Python wheel
Installation (Rust)
To use NBIS-rs, add the following to your Cargo.toml:
[dependencies]
nbis-rs = { git = "https://github.com/Seventh-Sense-Artificial-Intelligence/nbis-rs", branch = "main", version = "0.1.3" }
Or you can run the following command on the terminal of your new rust project:
cargo add nbis-rs --git https://github.com/Seventh-Sense-Artificial-Intelligence/nbis-rs --branch main
Running the above command will add the above dependency in your Cargo.toml
Now you can use the nbis-rs rust library in your project as mentioned in next section.
Usage (Rust)
Here's a simple example of how to use NBIS-rs in your project:
fn main() -> Result<(), Box<dyn std::error::Error>> {
use nbis;
use nbis::Minutiae;
use nbis::NbisExtractorSettings;
// Configuration for the NbisExtractor
let settings = NbisExtractorSettings {
// No filtering on minutiae quality (all minutiae will be included)
min_quality: 0.0,
// Do not compute ROI or center to save computing resources
get_center: false,
// Do not check if the image is a fingerprint using SIVV
check_fingerprint: false,
// compute the NFIQ score
compute_nfiq2: true,
// No specific PPI, use the default
ppi: None,
};
let extractor = nbis::NbisExtractor::new(settings)?;
// Read the bytes from a file (you could also use nbis::extract_minutiae_from_image_file)
// but here we just load the image bytes as image paths on mobile platforms can be tricky.
let image_bytes = std::fs::read("test_data/p1/p1_1.png")?;
let minutiae_1 = extractor.extract_minutiae(&image_bytes)?;
let image_bytes = std::fs::read("test_data/p1/p1_2.png")?;
let minutiae_2 = extractor.extract_minutiae(&image_bytes)?;
let image_bytes = std::fs::read("test_data/p1/p1_3.png")?;
let minutiae_3 = extractor.extract_minutiae(&image_bytes)?;
// Compare the two sets of minutiae
let score = minutiae_1.compare(&minutiae_2);
assert!(score > 35, "Expected a high similarity score between p1_1 and p1_2");
let score = minutiae_1.compare(&minutiae_3);
assert!(score > 35, "Expected a high similarity score between p1_1 and p1_3");
let score = minutiae_2.compare(&minutiae_3);
assert!(score > 35, "Expected a high similarity score between p1_2 and p1_3");
// Next we will demonstrate conversion to ISO/IEC 19794-2:2005 format
// and back to a `Minutiae` object.
// First, convert the minutiae to ISO template bytes
let iso_template: Vec<u8> = minutiae_1.to_iso_19794_2_2005()?;
// And load it back
let minutiae_from_iso = extractor.load_iso_19794_2_2005(&iso_template)?;
// Compare the original minutiae with the one loaded from ISO template
for (a, b) in minutiae_from_iso.get().iter().zip(minutiae_1.get().iter()) {
assert_eq!(a.x(), b.x());
assert_eq!(a.y(), b.y());
assert_eq!(a.angle(), b.angle());
assert_eq!(a.kind(), b.kind());
// Reliability is quantized in the round-trip conversion,
// so we allow a small margin of error.
assert!((a.reliability() - b.reliability()).abs() < 1e-1);
}
// Finally we demonstrate loading from a file and comparing a negative match
let minutiae_4 = extractor.extract_minutiae_from_image_file("test_data/p2/p2_1.png")?;
let score = minutiae_1.compare(&minutiae_4);
assert!(score < 35, "Expected a low similarity score between p1_1 and p2_1");
// We can access the NFIQ2 quality via:
let nfiq2_quality = minutiae_1.quality();
assert!(nfiq2_quality.score > 50, "Expected a positive NFIQ2 quality score");
Ok(())
}
Installation (Python)
To install the Python bindings, you can use pip:
pip install nbis-python
Usage (Python)
Here's a simple example of how to use the NBIS Python bindings:
import nbis
from nbis import NbisExtractor, NbisExtractorSettings
#Configuration for the NbisExtractor
settings = NbisExtractorSettings(
# Do not filter on minutiae quality (get all minutiae)
min_quality=0.0,
# Do not get the fingerprint center or ROI
get_center=False,
# Do not use SIVV to check if the image is a fingerprint
check_fingerprint=False,
# Compute the NFIQ2 quality score
compute_nfiq2=True,
# No specific PPI, use the default
ppi=None,
)
extractor = nbis.new_nbis_extractor(settings)
# Read the bytes from a file
image_bytes = open("test_data/p1/p1_1.png", "rb").read()
minutiae_1 = extractor.extract_minutiae(image_bytes)
image_bytes = open("test_data/p1/p1_2.png", "rb").read()
minutiae_2 = extractor.extract_minutiae(image_bytes)
image_bytes = open("test_data/p1/p1_3.png", "rb").read()
minutiae_3 = extractor.extract_minutiae(image_bytes)
# Compare the two sets of minutiae
score = minutiae_1.compare(minutiae_2)
assert score > 50, "Expected a high similarity score between p1_1 and p1_2"
score = minutiae_1.compare(minutiae_3)
assert score > 50, "Expected a high similarity score between p1_1 and p1_3"
score = minutiae_2.compare(minutiae_3)
assert score > 50, "Expected a high similarity score between p1_2 and p1_3"
# Convert minutiae to ISO/IEC 19794-2:2005 format
iso_template = minutiae_1.to_iso_19794_2_2005()?
# Load it back
minutiae_from_iso = extractor.load_iso_19794_2_2005(iso_template)
# Compare the original minutiae with the one loaded from ISO template
for a, b in zip(minutiae_from_iso.get(), minutiae_1.get()):
assert a.x() == b.x()
assert a.y() == b.y()
assert a.angle() == b.angle()
assert a.kind() == b.kind()
# Reliability is quantized in the round-trip conversion,
# so we allow a small margin of error.
assert abs(a.reliability() - b.reliability()) < 0.1
# Finally we demonstrate loading from a file and comparing a negative match
minutiae_4 = extractor.extract_minutiae_from_image_file("test_data/p2/p2_1.png")
score = minutiae_1.compare(minutiae_4)
assert score < 50, "Expected a low similarity score between p1_1 and p2_1"
# We can access the NFIQ2 quality via:
nfiq2_quality = minutiae_1.quality()
assert nfiq2_quality.score > 50, "Expected a positive NFIQ2 quality score"
Contributing
Contributions are welcome! Please open an issue or submit a pull request on GitHub.
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 Distributions
Built Distributions
Filter files by name, interpreter, ABI, and platform.
If you're not sure about the file name format, learn more about wheel file names.
Copy a direct link to the current filters
File details
Details for the file nbis_python-0.1.13-py3-none-manylinux_2_28_x86_64.whl.
File metadata
- Download URL: nbis_python-0.1.13-py3-none-manylinux_2_28_x86_64.whl
- Upload date:
- Size: 23.8 MB
- Tags: Python 3, manylinux: glibc 2.28+ x86-64
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/6.2.0 CPython/3.12.10
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
71c454907f07aef3f137a4ea8fe77b54d9a60ba1fbd453e52b38c95dfff74c01
|
|
| MD5 |
0e5ec6ae1dcea46b1978ed2cc0f7ae66
|
|
| BLAKE2b-256 |
13e89a25a8d7d4aafdf51788fa3c6802617e0a9a76ab93c693f3c3420339769b
|
File details
Details for the file nbis_python-0.1.13-py3-none-macosx_11_0_arm64.whl.
File metadata
- Download URL: nbis_python-0.1.13-py3-none-macosx_11_0_arm64.whl
- Upload date:
- Size: 3.5 MB
- Tags: Python 3, macOS 11.0+ ARM64
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/6.2.0 CPython/3.12.10
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
14b8a0567069d322cd1a959200c38474513d7f0bf6d3f658ce37a5701424b28e
|
|
| MD5 |
2f8e9221126cc6db5d64027c90a8995a
|
|
| BLAKE2b-256 |
223aaa64cde3eea343a0cde66def652fe125726c5dfbe326c441851fe1864783
|