Towards Real-Time Visual Tracking with Graded Color-names Features
- URL: http://arxiv.org/abs/2206.08701v1
- Date: Fri, 17 Jun 2022 11:38:37 GMT
- Title: Towards Real-Time Visual Tracking with Graded Color-names Features
- Authors: Lin Li, Guoli Wang, Xuemei Guo,
- Abstract summary: MeanShift algorithm has been widely used in tracking tasks because of its simplicity and efficiency.
Traditional MeanShift algorithm needs to label the initial region of the target, which reduces the applicability of the algorithm.
We develop a tracking method that combines the background models and the graded features of color-names under the MeanShift framework.
- Score: 10.475679500780574
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: MeanShift algorithm has been widely used in tracking tasks because of its
simplicity and efficiency. However, the traditional MeanShift algorithm needs
to label the initial region of the target, which reduces the applicability of
the algorithm. Furthermore, it is only applicable to the scene with a large
overlap rate between the target area and the candidate area. Therefore, when
the target speed is fast, the target scale change, shape deformation or the
target occlusion occurs, the tracking performance will be deteriorated. In this
paper, we address the challenges above-mentioned by developing a tracking
method that combines the background models and the graded features of
color-names under the MeanShift framework. This method significantly improve
performance in the above scenarios. In addition, it facilitates the balance
between detection accuracy and detection speed. Experimental results
demonstrate the validation of the proposed method.
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