Skip to content

iBeta (Level 2) Certified, Single-Image Based Face Liveness Detection (Face Anti Spoofing) Server SDK

Notifications You must be signed in to change notification settings

MiniAiLive/FaceLivenessDetection-Windows

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

36 Commits
 
 
 
 
 
 
 
 

Repository files navigation

Face Liveness Detection Windows SDK

MiniAiLive Logo

Welcome to the MiniAiLive!

A 100% spoofing-prevention rate for both 3D printed and resin facial masks, confirms MiniAiLive® as a leading facial recognition solution for preventing biometric fraud in remote applications, such as online banking, requiring identity verification before granting access to sensitive data or valuable assets. Feel free to use our MiniAI 3D Face Passive Liveness Detection (face anti-spoofing) Windows SDK.

Note

SDK is fully on-premise, processing all happens on hosting server and no data leaves server.

Table of Contents

Face-LivenessSDK Installation Guide

Prerequisites

  • Python 3.6+
  • Windows
  • CPU: 2 cores or more
  • RAM: 8 GB or more

Installation Steps

  1. Download the Face Liveness Detection Windows Server Installer:

    Download the Server installer for your operating system from the following link:

    Download the On-premise Server Installer

  2. Install the On-premise Server:

    Run the installer and follow the on-screen instructions to complete the installation.

  3. Request License and Update:

    Run MIRequest.exe file to generate a license request file. You can find it here.

    C:\Users\Dev-1{Your User name}\AppData\Local\MiniAiLive\MiniAiLive-FaceLiveness-WinServer

    Open it, generate a license request file, and send it to us via email or WhatsApp. We will send the license based on your Unique Request file, then you can upload the license file to allow to use. Refer the below images.

  4. Verify Installation:

    After installation, verify that the On-premise Server is correctly installed by checking the task manager:

Face-LivenessSDK API Details

Endpoint

  • POST http://127.0.0.1:8092/api/check_liveness Face Liveness Detection API
  • POST http://127.0.0.1:8092/api/check_liveness_base64 Face Liveness Detection API

Request

  • URL: http://127.0.0.1:8092/api/check_liveness
  • Method: POST
  • Form Data:
    • image: The image file (PNG, JPG, etc.) to be analyzed. This should be provided as a file upload.
Screenshot 2024-07-16 at 5 12 01 AM
  • URL: http://127.0.0.1:8092/api/check_liveness_base64
  • Method: POST
  • Raw Data:
    • JSON Format: { "image": "--base64 image data here--" }
Screenshot 2024-07-16 at 5 11 34 AM

Response

The API returns a JSON object with the liveness result of the input face image. Here is an example response:

Gradio Demo

We have included a Gradio demo to showcase the capabilities of our Face Liveness Detection SDK. Gradio is a Python library that allows you to quickly create user interfaces for machine learning models.

How to Run the Gradio Demo

  1. Install Gradio:

    First, you need to install Gradio. You can do this using pip:

    git clone https://github.com/MiniAiLive/FaceLivenessDetection-Windows.git
    pip install -r requirement.txt
    cd gradio
  2. Run Gradio Demo:

    python app.py

Python Test API Example

To help you get started with using the API, here is a comprehensive example of how to interact with the Face Liveness Detection API using Python. You can use API with another language you want to use like C++, C#, Ruby, Java, Javascript, and more

Prerequisites

  • Python 3.6+
  • requests library (you can install it using pip install requests)

Example Script

This example demonstrates how to send an image file to the API endpoint and process the response.

import requests

# URL of the web API endpoint
url = 'http://127.0.0.1:8092/api/check_liveness'

# Path to the image file you want to send
image_path = './test_image.jpg'

# Read the image file and send it as form data
files = {'image': open(image_path, 'rb')}

try:
    # Send POST request
    response = requests.post(url, files=files)

    # Check if the request was successful
    if response.status_code == 200:
        print('Request was successful!')
        # Parse the JSON response
        response_data = response.json()
        print('Response Data:', response_data)
    else:
        print('Request failed with status code:', response.status_code)
        print('Response content:', response.text)

except requests.exceptions.RequestException as e:
    print('An error occurred:', e)

Request license

Feel free to Contact US to get a trial License. We are 24/7 online on WhatsApp.

Face & IDSDK Online Demo, Resources

Our Products

No Project Features
1 FaceRecognition-Docker 1:1 & 1:N Face Matching
2 FaceRecognition-Windows 1:1 & 1:N Face Matching
3 FaceRecognition-Linux 1:1 & 1:N Face Matching
4 FaceRecognition-LivenessDetection-Android 1:1 & 1:N Face Matching, 2D & 3D Face Passive Liveness Detection
5 FaceRecognition-LivenessDetection-iOS 1:1 & 1:N Face Matching, 2D & 3D Face Passive Liveness Detection
6 FaceRecognition-LivenessDetection-CPP 1:1 & 1:N Face Matching, 2D & 3D Face Passive Liveness Detection
7 FaceLivenessDetection-Docker 2D & 3D Face Passive Liveness Detection
8 FaceLivenessDetection-Windows 2D & 3D Face Passive Liveness Detection
9 FaceLivenessDetection-Linux 2D & 3D Face Passive Liveness Detection
10 FaceLivenessDetection-Android 2D & 3D Face Passive Liveness Detection
11 FaceLivenessDetection-iOS 2D & 3D Face Passive Liveness Detection
12 FaceAttributes-Android Face Attributes, Age & Gender Estimation
13 FaceMatching-Android 1:1 Face Matching
14 FaceMatching-WinApp 1:1 Face Matching
15 ID-DocumentRecognition-Docker ID Card, Passport, Driver License, Credit Card, MRZ Recognition
16 ID-DocumentRecognition-Windows ID Card, Passport, Driver License, Credit Card, MRZ Recognition
17 ID-DocumentRecognition-Linux ID Card, Passport, Driver License, Credit Card, MRZ Recognition
18 ID-DocumentRecognition-Android ID Card, Passport, Driver License, Credit Card, MRZ Recognition
19 ID-DocumentLivenessDetection-Docker ID Document Liveness Detection
20 ID-DocumentLivenessDetection-Windows ID Document Liveness Detection
21 ID-DocumentLivenessDetection-Linux ID Document Liveness Detection

About MiniAiLive

MiniAiLive is a leading AI solutions company specializing in computer vision and machine learning technologies. We provide cutting-edge solutions for various industries, leveraging the power of AI to drive innovation and efficiency.

Contact US

For any inquiries or questions, please contact us on WhatsApp.

www.miniai.livewww.miniai.live