Social-Distancing-and-Face-Mask-Detection
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Social Distancing and Face Mask Detection using TensorFlow. Install all required Libraries and GPU drivers as well. Refer to README.md or REPORT for know to installation requirement
Social Distancing and Face Mask Detection :mask:
:mask:C O V I D - 1 9 A L E R T!:pray:
Developed By:
👉 [Shantanu Gupta] Portfolio GitHub LinkedIN
About--
Social Distancing and Face Mask Detection Platform utilizes Artificial Network to perceive if a person walk with maintain social distance and does/doesn’t wear a mask as well. The application can be associated with any current or new IP cameras to identify individuals maintaining social distance with/without a mask. :mask:
System Requirement -- :desktop_computer:
- SOFTWARE--
- Software: Anaconda + Python 3.x (3.8 or earlier)
- Editor: VS Code/ PyCharm/ Sublime/ Spyder
- Environment: TensorFlow
- GPU Drivers: Nvidia® CUDA® 11.0 requires 450.x or above CUDA® Toolkit (TensorFlow >= 2.4.0) cuDNN SDK 8.0.4 (TensorFlow >= 2.4.0)
- HARDWARE--
- GPU: Graphics Processor (NVIDIA) ̶min 2GB
- Camera: CCTV/ Webcam/ Mobile Camera (Sharing Camera)
- Storage Disk (Optional): SSD – Min 400MB/s Read Speed
Installation Process--
- Download Anaconda Software --
| Operating System | Download Link | |
|---|---|---|
| :point_right: | Windows | click here |
| :point_right: | Mac | click here |
| :point_right: | Linux | click here |
:loudspeaker: During Installation be sure to check to set Environmental variable path
- Create new Environment for the installation of libraries:
- Open Command Prompt / Anaconda Prompt and type
conda create --name tf_python
you can set any name in place of tf_python to create a new envionment. and after typeyand enter. - Install all required Libraries given in requirement.txt by using command
pip install -r requirement.txt
- Open Command Prompt / Anaconda Prompt and type
Required Libraries--
File Required to Download --
- DATASETS : Using datasets to train the model for Face Mask Detection model. To download the dataset -- :point_right: Click here :point_left: (Dataset with 4,000 Images Sampels) :star2:File contain 2 Sub-Folder i.e. With_mask & Without_mask (each folder contain 2k samples of images).
This is a balanced dataset containing faces with and without masks with a mean height of 283.68 and mean width of 278.77

- Yolo Weights (V3) -- Pre-Trained model:
YOLO (You Only Live Once), the pre-trained weights of the neural network are stored inyolov3.weightsDownload the Weight File :point_right: Click here :point_left:
Trained Result of Face Mask Model--

File Structure
Set all downloaded files to their respective folders/path as given in Folder Structure Diagram.

RUN the Main Module--
- Using Command Prompt or Anaconda Prompt:
- To activate environment:--
conda activate tf_python - Run main module:--
python main.py
- To activate environment:--
Outputs--

Contribute:
:fire: Contributions are always welcome!
Drop a :star: if you like this Repository.. :smile:
:point_right::point_right::point_right: []:point_left::point_left::point_left: