Skip to content

Latest commit

 

History

History
43 lines (35 loc) · 2.52 KB

README.md

File metadata and controls

43 lines (35 loc) · 2.52 KB

AnonAI-skupina1

This branch contains implementation of an anonymization system for video files. The system automatically detects people's faces in video and blurs them using a filter. Face detection and blurring is supported both for live video feed from a webcam and existing video files in the local filesystem. The code was written in Python 3.6.

Instructions

  1. Clone this repository to your local filesystem

  2. Make sure that you have the required dependencies installed (the versions specified below have been verified to be working with our code):

    • numpy v1.14.6
    • OpenCV v4.0.0
    • scikit-learn v0.20.1
    • matplotlib v3.0.2
    • mxnet v1.4.0: for best performance, we recommend running mxnet on a dedicated GPU (for the given mxnet version, installation of Cuda 9.2 is required). However, if you don't have a GPU, don't worry, all the functionality will still be available to you, but at a lower performance.
  3. If you are using Insightface for face detection, the pretrained model can be downloaded from https://www.dropbox.com/s/tj96fsm6t6rq8ye/model-r100-arcface-ms1m-refine-v2.zip?dl=0

    • extracting the model should produce a .json and .params file. Both files should be located in the same directory.
  4. Modify model_path in paths/paths.py file to point to the pretrained model files, which you have downloaded and extracted in the previous step:

    • relative model_path specification is supported from this project's root directory

    • append 'model' to the model path

    • example: the downloaded and exctracted model is in the models directory, located on the same level as this project root directory:

        +--anonimizacijaPrvaSkupina
        |  +--paths
        |  |  +--paths.py
        |  +--other project files
        |
        +--models
            +--model-r100-ii
                +--model-0000.params
                +--model-symbol.json
        

      model_path = "../models/model-r100-ii/model"

  5. Anonymization of existing video files

    • modify video_path in paths/paths.py to point to the video file that you want to anonymize
    • execute the conversion script in the project root directory: python3 edit_video.py
    • the anonymized video will be stored in the same directory as the input video with 'output_' prepended to its name
  6. Anonymization of live video feed from webcam

    • connect the webcam to your device via USB
    • execute the script in the project root directory: python3 webcam_feed.py