The project is still under development.
The issue of mass surveillance in CCTV camera feed is very important. Surveillance can be of different forms like malicious activity detection, identification of a particular entity particular individual in a CCTV video) or in general keeping tracks of movements of human beings. In our project, the focus has been given to find the trajectory/path of human through the grid of CCTV cameras also known as tracking. Also, manually doing tracking can be very difficult and therefore we present to you our AI based solution that is capable to do this on its own. This is done with the help of face recognition plus video processing. Current system in this field aims to search for an entity in video by extracting its face and matching (or running) it against a database of human faces that is in the interest. So, none of the systems solve the task if they do not have a predefined database against whom the matching is done. Our, Smart AI will do this in a smart way by first generating datasets from human faces taken from CCTV video and use it in a Face Recognition model we are using. The use of deep learning libraries like Keras along with some image processing tools like openCV with a cloud based solution is done to achieve this task. Keywords: Automated tracking, Convolutional-Neural-Network, face recognition.
Please take a look at the slides and Report for more information.
- Python3
- OpenCV
- Keras
- Flask
- SQlite or MySQL
Run FaceRecog.ipynb for looking at the original VGG model
Run FaceRecog_TransfererLearning.ipynb for our model ( VGG model with transfer learning)
Both the model use a face dataset for experimentation. Please it here Face94 and place in the project folder where the model in kept.
Go to the ClientSideCCTV folder and Run
Python main.py
This should launch the client side system. By default it uses the footage form Computer webCam.
Images with unique identifier are generated in the RecognizedFaces folder.
Configure flask in apache for Google Cloud or Aws and run
Server/Server Code.py file.
Configuring is required only for deplyment is cloud (Centralised server). If you are running locally then normal
python Server/Server Code.py is suffient
Linking our Centralised server to the Face Recognition model, so that our main logic could work is unser progress. After the linking is done appropriate analytics can be generated.
- Keras not installed ( Keras with Tensorflow)
We have used Google cloud free tier service for deployment.
- Debojyoti Paul - Initial work - PurpleBooth
- Bhaskar Sarkar - Initial work