Seamless Face Recognition on the Go with Python

제품 정보

항상 무료
PieceX 커뮤니티만을 위한 소스 코드 프로젝트를 무료로 즐겨보세요.
사용 설명서 문서

개발자

Auxle
코드 샘플 요청 다이렉트 메세지

Nov 22, 2024

공개 채팅

제품 세부 정보

AI-Powered Face Detection and Recognition Code Seamless, Accurate, and Ready-to-Deploy


Unlock the power of advanced AI-driven face detection and recognition with our Python-based solution. Designed for ease of implementation, this robust algorithm integrates seamlessly into your projects, whether for security systems, attendance tracking, or personalized user experiences.


You just need One Photo and the accuracy is off the Chart.


Key Features:


  • Plug-and-Play Functionality: Minimal setup required for rapid deployment.

  • High Accuracy and Speed: Powered by state-of-the-art computer vision libraries like OpenCV and deep learning models.

  • Customizable and Scalable: Easily adaptable for real-time applications, including surveillance, access control, and analytics.

  • Lightweight and Efficient: Optimized for both edge devices and cloud-based platforms.

  • Flexible Integration: Works effortlessly across platforms with Python support.

Why Choose This Code?


  • Save development time with a pre-built, thoroughly tested algorithm.

  • Implement cutting-edge face recognition with ease, even on-the-fly.

  • Benefit from clear documentation and straightforward integration examples.

Upgrade your application with cutting-edge face detection and recognition technology today! Ideal for businesses and developers aiming to deliver secure, efficient, and personalized solutions.

Plug-and-Play Functionality
High Accuracy and Speed
Customizable and Scalable
Lightweight and Efficient
Flexible Integration

설치 지침

To install the required libraries, you can use `pip`, the package manager for Python. Here are the commands:

1. To install face_recognition
pip install face_recognition

Note: The `face_recognition` library depends on `dlib`, which requires CMake and development tools. Make sure to have these installed on your system. For example:
- On Ubuntu/Debian, execute the below commands:
sudo apt-get install cmake
sudo apt-get install build-essential

- On macOS, execute the below commands:
brew install cmake

If you encounter issues, consider installing `dlib` first:
pip install dlib

2. Install `opencv-python` (for `cv2`):
pip install opencv-python

변경 및 적응 지침

Add the code file to your project directory.

You can then, access the functions in the code file by importing and initialising an object as shown below:
from face_rec import Facerec
sfr = Facerec()

Store the images that you want to the model to recognise in a folder and use the below command to point to the directory:
sfr.load_encoding_images("your-folder-address")

Run the algorithm using the run_camera function that can be executed as,
sfr.run_camera()

The run_camera() function has a number of optional parameters that you can use to modify the output,
1. color: It accepts a tuple with three values in it. The default is (0,0,200), which gives you a red color frame.
2. thickness: An Integer value that determines the thickness of the Frame.
3. text_color: It accepts a tuple with three values in it. The default is (0,0,200), which gives you a red color text.
4. text_thickness: It accepts an Integer value to adjust the thickness of the text.
5. text_size: It accepts an Integer value to adjust the size of the text.

가격 정보

이 제품에는 사용 가능한 정보가 없습니다.

제한된 미리 보기


실제 제품에는 모든 파일과 전체 코드가 포함되어 있습니다.

종속성 확인

제품 외부 종속성 보기

무작위로 선택한 샘플 파일

프로젝트 파일 통계

계층구조

샘플 파일 선택
X

문의하기

  • 비즈니스 개발자를 위한 최신 정보를 원하십니까? 소스 코드 프로젝트에 대한 PieceX 커뮤니티의 요구사항을 알아보세요. PieceX의 최신 무료 커뮤니티 코드를 빠르게 알려드립니다.
PieceX Logo