🤗 Hugging Face - Here
📚 Product & Resources - Here
🛟 Help Center - Here
💼 KYC Verification Demo - Here
🙋♀️ Docker Hub - Here
sudo docker pull kbyai/face-recognition:latest
sudo docker run -e LICENSE="xxxxx" -p 8081:8080 -p 9001:9000 kbyai/face-recognition:latest
This repository demonstrates an advanced face recognition technology by implementing face comparison based on face feature extraction and face matching algorithm, which was implemented via a Dockerized Flask API
.
It includes features that allow for testing face recognition between two images using both image files and base64-encoded
images.
In this repo, we integrated
KBY-AI
's face recognition solution intoLinux Server SDK
by docker container.
We can customize the SDK to align with customer's specific requirements.
Face Liveness Detection | 🔽 Face Recognition |
---|---|
Face Detection | Face Detection |
Face Liveness Detection | Face Recognition(Face Matching or Face Comparison) |
Pose Estimation | Pose Estimation |
68 points Face Landmark Detection | 68 points Face Landmark Detection |
Face Quality Calculation | Face Occlusion Detection |
Face Occlusion Detection | Face Occlusion Detection |
Eye Closure Detection | Eye Closure Detection |
Mouth Opening Check | Mouth Opening Check |
No. | Repository | SDK Details |
---|---|---|
1 | Face Liveness Detection - Linux | Face Livness Detection |
2 | Face Liveness Detection - Windows | Face Livness Detection |
➡️ | Face Recognition - Linux | Face Recognition |
4 | Face Recognition - Windows | Face Recognition |
5 | Face Recognition - C# | Face Recognition |
To get Face SDK(mobile), please visit products here:
You can test the SDK using images from the following URL: https://web.kby-ai.com
To test the API, you can use Postman
. Here are the endpoints for testing:
-
Test with an image file: Send a POST request to
http://18.221.33.238:8081/compare_face
. -
Test with a
base64-encoded
image: Send a POST request tohttp://18.221.33.238:8081/compare_face_base64
.You can download the
Postman
collection to easily access and use these endpoints. click here
This project uses KBY-AI
's Face Recognition Server SDK
, which requires a license per machine.
-
The code below shows how to use the license:
Lines 26 to 36 in 5c6bdaf
-
To request the license, please provide us with the
machine code
obtained from thegetMachineCode
function.
🧙Email:
[email protected]
🧙Telegram:
@kbyai
🧙WhatsApp:
+19092802609
🧙Skype:
live:.cid.66e2522354b1049b
🧙Facebook:
https://www.facebook.com/KBYAI
- CPU: 2 cores or more (Recommended: 2 cores)
- RAM: 4 GB or more (Recommended: 8 GB)
- HDD: 4 GB or more (Recommended: 8 GB)
- OS: Ubuntu 20.04 or later
- Dependency: OpenVINO™ Runtime (Version: 2022.3)
-
Clone the project:
git clone https://github.com/kby-ai/FaceRecognition-Docker.git
-
Download the model from Google Drive: click here
cd FaceRecognition-Docker wget --load-cookies /tmp/cookies.txt "https://docs.google.com/uc?export=download&confirm=$(wget --quiet --save-cookies /tmp/cookies.txt --keep-session-cookies --no-check-certificate 'https://docs.google.com/uc?export=download&id=19vA7ZOlo19BcW8v4iCoCGahUEbgKCo48' -O- | sed -rn 's/.*confirm=([0-9A-Za-z_]+).*/\1\n/p')&id=19vA7ZOlo19BcW8v4iCoCGahUEbgKCo48" -O data.zip && rm -rf /tmp/cookies.txt unzip data.zip
-
Build the
Docker
image:sudo docker build --pull --rm -f Dockerfile -t kby-ai-face:latest .
-
Run the
Docker
container:sudo docker run -v ./license.txt:/home/openvino/kby-ai-face/license.txt -p 8081:8080 kby-ai-face
-
Send us the
machine code
and then we will give you a license key.After that, update the
license.txt
file by overwriting the license key that you received. Then, run theDocker
container again. -
To test the API, you can use
Postman
. Here are the endpoints for testing:Test with an image file: Send a POST request to
http://{xx.xx.xx.xx}:8081/compare_face
.Test with a
base64-encoded
image: Send a POST request tohttp://{xx.xx.xx.xx}:8081/compare_face_base64
.You can download the
Postman
collection to easily access and use these endpoints. click here
-
Setup Gradio Ensure that you have the necessary dependencies installed.
Gradio
requiresPython 3.6
or above.You can install
Gradio
usingpip
by running the following command:pip install gradio
-
Run the demo Run it using the following command:
cd gradio python demo.py
-
You can test within the following URL:
http://127.0.0.1:9000
-
Step One
First, obtain the
machine code
for activation and request a license based on themachine code
.machineCode = getMachineCode() print("machineCode: ", machineCode.decode('utf-8'))
-
Step Two
Next, activate the SDK using the received license.
setActivation(license.encode('utf-8'))
If activation is successful, the return value will be
SDK_SUCCESS
. Otherwise, an error value will be returned. -
Step Three
After activation, call the initialization function of the SDK.
initSDK("data".encode('utf-8'))
The first parameter is the path to the model.
If initialization is successful, the return value will be
SDK_SUCCESS
. Otherwise, an error value will be returned.
-
SDK_ERROR
This enumeration represents the return value of the
initSDK
andsetActivation
functions.Feature Value Name Successful activation or initialization 0 SDK_SUCCESS License key error -1 SDK_LICENSE_KEY_ERROR AppID error (Not used in Server SDK) -2 SDK_LICENSE_APPID_ERROR License expiration -3 SDK_LICENSE_EXPIRED Not activated -4 SDK_NO_ACTIVATED Failed to initialize SDK -5 SDK_INIT_ERROR -
FaceBox
This structure represents the output of the face detection function.
Feature Type Name Face rectangle int x1, y1, x2, y2 Face angles (-45 ~ 45) float yaw, roll, pitch Face quality (0 ~ 1) float face_quality Face luminance (0 ~ 255) float face_luminance Eye distance (pixels) float eye_dist Eye closure (0 ~ 1) float left_eye_closed, right_eye_closed Face occlusion (0 ~ 1) float face_occlusion Mouth opening (0 ~ 1) float mouth_opened 68 points facial landmark float [68 * 2] landmarks_68 Face templates unsigned char [2048] templates 68 points facial landmark
-
Face Detection
The
Face SDK
provides a single API for detecting faces, determiningface orientation
(yaw, roll, pitch), assessingface quality
, detectingfacial occlusion
,eye closure
,mouth opening
, and identifyingfacial landmarks
.The function can be used as follows:
faceBoxes = (FaceBox * maxFaceCount)() faceCount = faceDetection(image_np, image_np.shape[1], image_np.shape[0], faceBoxes, maxFaceCount)
This function requires 5 parameters.
- The first parameter: the byte array of the RGB image buffer.
- The second parameter: the width of the image.
- The third parameter: the height of the image.
- The fourth parameter: the
FaceBox
array allocated withmaxFaceCount
for storing the detected faces. - The fifth parameter: the count allocated for the maximum
FaceBox
objects.
The function returns the count of the detected face.
-
Create Template
The SDK provides a function that enables the generation of
template
s from RGB data. Thesetemplate
s can be used for face verification between two faces.The function can be used as follows:
templateExtraction(image_np1, image_np1.shape[1], image_np1.shape[0], faceBoxes1[0])
This function requires 4 parameters.
- The first parameter: the byte array of the RGB image buffer.
- The second parameter: the width of the image.
- The third parameter: the height of the image.
- The fourth parameter: the
FaceBox
object obtained from thefaceDetection
function.
If the
template
extraction is successful, the function will return0
. Otherwise, it will return-1
. -
Calculation similiarity
The
similarityCalculation
function takes a byte array of twotemplate
s as a parameter.similarity = similarityCalculation(faceBoxes1[0].templates, faceBoxes2[0].templates)
It returns the similarity value between the two
template
s, which can be used to determine the level of likeness between the two individuals.
The default thresholds are as the following below:
Lines 18 to 20 in 7580059