Online Multi-Object Tracking with delta-GLMB Filter based on Occlusion
and Identity Switch Handling
- URL: http://arxiv.org/abs/2011.10111v2
- Date: Mon, 26 Apr 2021 08:31:57 GMT
- Title: Online Multi-Object Tracking with delta-GLMB Filter based on Occlusion
and Identity Switch Handling
- Authors: Mohammadjavad Abbaspour and Mohammad Ali Masnadi-Shirazi
- Abstract summary: We propose an online multi-object tracking (MOT) method in a delta Generalized Labeled Multi-Bernoulli (delta-GLMB) filter framework.
To handle occlusion and miss-detection issues, we propose a measurement-to-disappeared track association method.
We evaluate the proposed method on well-known and publicly available MOT15 and MOT17 test datasets.
- Score: 1.713291434132985
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: In this paper, we propose an online multi-object tracking (MOT) method in a
delta Generalized Labeled Multi-Bernoulli (delta-GLMB) filter framework to
address occlusion and miss-detection issues, reduce false alarms, and recover
identity switch (ID switch). To handle occlusion and miss-detection issues, we
propose a measurement-to-disappeared track association method based on one-step
delta-GLMB filter, so it is possible to manage these difficulties by jointly
processing occluded or miss-detected objects. This part of proposed method is
based on a proposed similarity metric which is responsible for defining the
weight of hypothesized reappeared tracks. We also extend the delta-GLMB filter
to efficiently recover switched IDs using the cardinality density, size and
color features of the hypothesized tracks. We also propose a novel birth model
to achieve more effective clutter removal performance. In both
occlusion/miss-detection handler and newly-birthed object detector sections of
the proposed method, unassigned measurements play a significant role, since
they are used as the candidates for reappeared or birth objects. In addition,
we perform an ablation study which confirms the effectiveness of our
contributions in comparison with the baseline method. We evaluate the proposed
method on well-known and publicly available MOT15 and MOT17 test datasets which
are focused on pedestrian tracking. Experimental results show that the proposed
tracker performs better or at least at the same level of the state-of-the-art
online and offline MOT methods. It effectively handles the occlusion and ID
switch issues and reduces false alarms as well.
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