A Survey of Multi Object Tracking and Detecting Algorithm in Real Scene use in video surveillance systems
Abouzar Ghasemi, C.N Ravi Kumar "A Survey of Multi Object Tracking and Detecting Algorithm in Real Scene use in video surveillance systems". International Journal of Computer Trends and Technology (IJCTT) V29(1):31-39, October 2015. ISSN:2231-2803. www.ijcttjournal.org. Published by Seventh Sense Research Group.
Abstract -
There are now large networks of CCTV
cameras collecting great amounts of image data, many
of which deploy Pan-Tilt-Zoom (PTZ) controllable
cameras. A multi-camera and multi-sensor system has
potential both for gaining improved imaging quality
and for capturing more relevant details .Such a system
can also cause overflow of information and confusion if
data content is not analyzed in real-time. Video
Analytics is the emerging technology where Computer
Vision and Pattern Recognition techniques are used to
filter and manage real time CCTV videos for security
and intelligent monitoring. Background subtraction,
object detection, object tracking, re-identification, and
behavior analysis are the most important components
for a Video Analytics system. The scientist has some of
the cutting edge technologies in this area, which exploit
recent statistical and differential geometric theories
and adapt them to challenging tasks for example,
individuating eye directions, tracking groups of people,
re-identifying individuals in different days that take
place in real case scenarios. Detecting and tracking
human beings in a given scene represents one of the
most important and challenging tasks in computer
vision. We are interested to consider some of powerful
methods in these issues for their implications in videosurveillance
and driver assistance systems.
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Keywords
Multi object tracking, Multi object
detection, video surveillance system.