Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Multi-Complementary Model for Long-Term Tracking

View through CrossRef
In recent years, video target tracking algorithms have been widely used. However, many tracking algorithms do not achieve satisfactory performance, especially when dealing with problems such as object occlusions, background clutters, motion blur, low illumination color images, and sudden illumination changes in real scenes. In this paper, we incorporate an object model based on contour information into a Staple tracker that combines the correlation filter model and color model to greatly improve the tracking robustness. Since each model is responsible for tracking specific features, the three complementary models combine for more robust tracking. In addition, we propose an efficient object detection model with contour and color histogram features, which has good detection performance and better detection efficiency compared to the traditional target detection algorithm. Finally, we optimize the traditional scale calculation, which greatly improves the tracking execution speed. We evaluate our tracker on the Object Tracking Benchmarks 2013 (OTB-13) and Object Tracking Benchmarks 2015 (OTB-15) benchmark datasets. With the OTB-13 benchmark datasets, our algorithm is improved by 4.8%, 9.6%, and 10.9% on the success plots of OPE, TRE and SRE, respectively, in contrast to another classic LCT (Long-term Correlation Tracking) algorithm. On the OTB-15 benchmark datasets, when compared with the LCT algorithm, our algorithm achieves 10.4%, 12.5%, and 16.1% improvement on the success plots of OPE, TRE, and SRE, respectively. At the same time, it needs to be emphasized that, due to the high computational efficiency of the color model and the object detection model using efficient data structures, and the speed advantage of the correlation filters, our tracking algorithm could still achieve good tracking speed.
Title: Multi-Complementary Model for Long-Term Tracking
Description:
In recent years, video target tracking algorithms have been widely used.
However, many tracking algorithms do not achieve satisfactory performance, especially when dealing with problems such as object occlusions, background clutters, motion blur, low illumination color images, and sudden illumination changes in real scenes.
In this paper, we incorporate an object model based on contour information into a Staple tracker that combines the correlation filter model and color model to greatly improve the tracking robustness.
Since each model is responsible for tracking specific features, the three complementary models combine for more robust tracking.
In addition, we propose an efficient object detection model with contour and color histogram features, which has good detection performance and better detection efficiency compared to the traditional target detection algorithm.
Finally, we optimize the traditional scale calculation, which greatly improves the tracking execution speed.
We evaluate our tracker on the Object Tracking Benchmarks 2013 (OTB-13) and Object Tracking Benchmarks 2015 (OTB-15) benchmark datasets.
With the OTB-13 benchmark datasets, our algorithm is improved by 4.
8%, 9.
6%, and 10.
9% on the success plots of OPE, TRE and SRE, respectively, in contrast to another classic LCT (Long-term Correlation Tracking) algorithm.
On the OTB-15 benchmark datasets, when compared with the LCT algorithm, our algorithm achieves 10.
4%, 12.
5%, and 16.
1% improvement on the success plots of OPE, TRE, and SRE, respectively.
At the same time, it needs to be emphasized that, due to the high computational efficiency of the color model and the object detection model using efficient data structures, and the speed advantage of the correlation filters, our tracking algorithm could still achieve good tracking speed.

Related Results

Establishment and Application of the Multi-Peak Forecasting Model
Establishment and Application of the Multi-Peak Forecasting Model
Abstract After the development of the oil field, it is an important task to predict the production and the recoverable reserve opportunely by the production data....
Moving targets visual tracking in complex scenes based on PCR6 combine rules
Moving targets visual tracking in complex scenes based on PCR6 combine rules
The aim of this article is to investigate multi-moving targets visual tracking in complex scenes based on PCR6 (proportional conflict redistribution 6) combine rules, and improve t...
Visual tracking algorithm based on template updating and dual feature enhancement
Visual tracking algorithm based on template updating and dual feature enhancement
Aiming at the problem of tracking failure due to target deformation, flipping and occlusion in visual tracking, a template updating algorithm based on image structural similarity i...
Study on multi-beam superposition using complementary polarization control plates
Study on multi-beam superposition using complementary polarization control plates
In order to meet the requirement for uniform irradiation on the target in inertial confinement fusion, a schemie is proposed for achieving the depolarized superposition of multi-be...
Multi-Target Tracking Using Windowed Fourier Single-Pixel Imaging
Multi-Target Tracking Using Windowed Fourier Single-Pixel Imaging
The single-pixel imaging (SPI) technique enables the tracking of moving targets at a high frame rate. However, when extended to the problem of multi-target tracking, there is no ef...
Long-term care needs and hospitalization costs with long-term care insurance: a mixed-sectional study
Long-term care needs and hospitalization costs with long-term care insurance: a mixed-sectional study
BackgroundWith the rapid aging of the population, the health needs of the older adult have increased significantly, resulting in the frequent occurrence of the “social hospitalizat...
To Quickly Detect the Geographical Origin of Baimudan Tea by Multi-AdaBoost Model Combined with Raman Spectroscopy
To Quickly Detect the Geographical Origin of Baimudan Tea by Multi-AdaBoost Model Combined with Raman Spectroscopy
Abstract Multi-AdaBoost model has great potential in the field of spectral analysis. Baimudan tea is a type of white tea with superior quality. So far, the analysis of the ...
Using Adaptive Object Model to Basketball Tracking Algorithm and Simulation
Using Adaptive Object Model to Basketball Tracking Algorithm and Simulation
The adaptive object model method is an effective way to develop dynamic and configurable adaptive software. It has the characteristics of metamodel, description drive, and runtime ...

Back to Top