SAMOT: Switcher-Aware Multi-Object Tracking and Still Another MOT
Measure
- URL: http://arxiv.org/abs/2009.10338v1
- Date: Tue, 22 Sep 2020 06:22:21 GMT
- Title: SAMOT: Switcher-Aware Multi-Object Tracking and Still Another MOT
Measure
- Authors: Weitao Feng, Zhihao Hu, Baopu Li, Weihao Gan, Wei Wu, Wanli Ouyang
- Abstract summary: Multi-Object Tracking (MOT) is a popular topic in computer vision.
Identity issue, i.e., an object is wrongly associated with another object of a different identity, still remains to be a challenging problem.
This paper proposes a novel switcher-aware framework for multi-object tracking.
- Score: 88.74585449906313
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Multi-Object Tracking (MOT) is a popular topic in computer vision. However,
identity issue, i.e., an object is wrongly associated with another object of a
different identity, still remains to be a challenging problem. To address it,
switchers, i.e., confusing targets thatmay cause identity issues, should be
focused. Based on this motivation,this paper proposes a novel switcher-aware
framework for multi-object tracking, which consists of Spatial Conflict Graph
model (SCG) and Switcher-Aware Association (SAA). The SCG eliminates spatial
switch-ers within one frame by building a conflict graph and working out the
optimal subgraph. The SAA utilizes additional information from potential
temporal switcher across frames, enabling more accurate data association.
Besides, we propose a new MOT evaluation measure, Still Another IDF score
(SAIDF), aiming to focus more on identity issues.This new measure may overcome
some problems of the previous measures and provide a better insight for
identity issues in MOT. Finally,the proposed framework is tested under both the
traditional measures and the new measure we proposed. Extensive experiments
show that ourmethod achieves competitive results on all measure.
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