Figure 14: Experiment results in real world environment
under drastically changing lighting conditions.
Figure 15: Experiment with real robot.
the field of view of the cameras thereby influencing
the background subtraction and also occluding hu-
mans in different cameras while moving. See video:
www.youtube.com/watch?v=Pn7kyhlEkEc&list=UU
CgI4kT12FB7GjphbrIKAQ&index=2&feature=plpp
video
6 CONCLUSIONS AND FUTURE
WORK
To conclude this paper proposed and validated a ro-
bust multiple human tracker. The primary contri-
butions are: A vision based real-time 3D multiple
human tracking system; Simultaneous multiple oc-
clusion handling module; A machine learning based
model trained to classify quality lighting conditions;
Updating the background model in the presence of
foreground targets; Analysis of each visual modality
for intelligent fusion. Furthermore, a novel approach
through which zero error ground truth data for evalu-
ation and validation of the tracker was introduced and
experiments were conducted to very different aspects.
In the future work camera placements will be im-
proved for better stereo coverage. The target mod-
elled will be improved to resemble the human shape
more closely. The detection and occlusion handling
modules will be improved by adding a classification
engine such as in pedestrian detection systems to con-
firm the presence of a human. Addition visual modal-
ities will be introduced into the fusion engine.
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