Multiple Object Tracking in Recent Times: A Literature Review
- URL: http://arxiv.org/abs/2209.04796v1
- Date: Sun, 11 Sep 2022 06:12:28 GMT
- Title: Multiple Object Tracking in Recent Times: A Literature Review
- Authors: Mk Bashar, Samia Islam, Kashifa Kawaakib Hussain, Md. Bakhtiar Hasan,
A.B.M. Ashikur Rahman and Md. Hasanul Kabir
- Abstract summary: Multiple object tracking has become one of the trending problems in computer vision.
Mot is one of the critical vision tasks for different issues like occlusion in crowded scenes, similar appearance, small object detection difficulty, ID switching, etc.
We have studied more than a hundred papers published over the last three years and have tried to extract the techniques that are more focused on by researchers in recent times to solve the problems of MOT.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Multiple object tracking gained a lot of interest from researchers in recent
years, and it has become one of the trending problems in computer vision,
especially with the recent advancement of autonomous driving. MOT is one of the
critical vision tasks for different issues like occlusion in crowded scenes,
similar appearance, small object detection difficulty, ID switching, etc. To
tackle these challenges, as researchers tried to utilize the attention
mechanism of transformer, interrelation of tracklets with graph convolutional
neural network, appearance similarity of objects in different frames with the
siamese network, they also tried simple IOU matching based CNN network, motion
prediction with LSTM. To take these scattered techniques under an umbrella, we
have studied more than a hundred papers published over the last three years and
have tried to extract the techniques that are more focused on by researchers in
recent times to solve the problems of MOT. We have enlisted numerous
applications, possibilities, and how MOT can be related to real life. Our
review has tried to show the different perspectives of techniques that
researchers used overtimes and give some future direction for the potential
researchers. Moreover, we have included popular benchmark datasets and metrics
in this review.
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