Real Time Adaptive Tracking System Using Computer Vision

Authors

  • Ayonika Paul

Keywords:

Real time object tracking, RAT framework, Judge and track objects from dissimilar distances, Learning, Experts.

Abstract

This project studies long-time object tracking in a sequence of frames. In this project, a
detector is trained with specimens found on the path of a tracker that itself does not rely on
the object detector. We attain high robustness and outdo current adaptive tracking-bydetection (11) approaches by decoupling object tracking and object detection. A substantial
reduction of calculating time is attained by means of simple features for object detection and
by using a cascaded method. The object location is marked in each frame. The task is to find
the position of object in that frame else it must notify that the object is absent in the
consecutive frames. We have developed a Real Time Tracking framework. The task of longtime tracking is divided as follows: Tracking, Learning and Detection. The tracker must
follow the marked object of interest in consecutive frames. The detector restricts all observed
appearances and amends the tracker when required. To evade these blunders there forth, the
learning approximates the detector’s blunders and re-evaluates it. This project studies
methods to recognize the detector’s faults and learn from, by developing a learning method
with the help of “experts” which will estimate these blunders. We call it the P-N learning.
With the help of RAT and P-N learning, our real-time processing can be described as an
extremely integrated arrangement providing very precise object detection with RGB-D
sensor.

Published

2018-08-11

How to Cite

Ayonika Paul. (2018). Real Time Adaptive Tracking System Using Computer Vision. Journal of Electronic Design Engineering, 4(2), 13–20. Retrieved from http://matjournals.co.in/index.php/JOEDE/article/view/6733

Issue

Section

Articles