A HYBRID MODEL FOR HUMAN ACTIVITY SURVEILLANCE USING DEEP LEARNING AND MOTION FLOW
Date
2022-03Author
Girdhar, Palak
Johri, Dr. Prashant (Supervisor)
Virmani, Dr. Deepali (Co Supervisor)
Metadata
Show full item recordAbstract
Human Activity Recognition from digital video is gaining popularity because of
increasing crime rate worldwide. With the increase in crime rate, there is a massive
increase in the installation of surveillance cameras. Monitoring these surveillance
cameras on 24x7 basis, requires a lot of manpower. The accuracy of the system
depends upon the activeness of the supervising entity. Sometimes, biased nature of the
supervising person, fatigue issue results in the inaccurate decision. Therefore, there is
a dire need of automated surveillance system, which can detect anomalous event
correctly and in time. The problem of detecting anomalous event involves recognizing
the human activity closely from the data collected through CCTVs.
For the effective monitoring, an automated surveillance system is the need of time. In
this work, a deep learning-based approach is used to classify the activities correctly
from the video data. Collection of Image frames are considered for classification, as
action in a single image frame may not be same in subsequent image frame.
Therefore, in order to understand the human activities, analysis is made on sequence
of image frames. In addition to spatial correlation present in the 2D images, temporal
structure present in the video data is also considered.