4.4 Article Retracted Publication

被撤回的出版物: Multiscale fast correlation filtering tracking algorithm based on a feature fusion model (Retracted article. See vol. 34, 2022)

Journal

Publisher

WILEY
DOI: 10.1002/cpe.5533

Keywords

correlation filtering tracking; features fusion model; hierarchical principal component analysis algorithm; object tracking; real-time conditions

Funding

  1. National Natural Science Foundation of China [61972056, 61811530332, 6191340416, 6181150410]
  2. Open Research Fund of Hunan Provincial Key Laboratory of Intelligent Processing of Big Data on Transportation [2015TP1005]
  3. Changsha Science and Technology Planning [KQ1703018, KQ1706064, KQ1703018-01, KQ1703018-04]
  4. Research Foundation of Education Bureau of Hunan Province [17A007]
  5. Changsha Industrial Science and Technology Commissioner [2017-7]
  6. Junior Faculty Development Program Project of Changsha University of Science and Technology [2019QJCZ011]

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A multi-scale fast correlation filtering tracking algorithm based on a feature fusion model is proposed to improve tracking accuracy in complex scenes, achieving superior performance and robustness in various challenging scenarios, including occlusion and scale changes. By reducing dimensions and fusing features, the algorithm demonstrates promising results in object tracking on benchmark datasets, outperforming popular correlation filtering tracking methods.
In scenes high in visual complexity, the identification of a moving object can be affected by changes in scale and occlusion factors during the tracking process, resulting in reduced tracking accuracy. Accordingly, to address the problem of low accuracy, a multiscale fast correlation filtering tracking algorithm based on a feature fusion model is proposed in the present work with the aim of reducing the poor tracking effects caused by occlusion discrimination and scale changes in complex scenes. The object's grayscale (GRAY) feature, histogram of oriented gradient (HOG) feature, and color name (CN) feature are reduced to dimensions and fused to form a feature matrix. Moreover, a hierarchical principal component analysis (HPCA) algorithm is used to extract visually salient features and reconstruct the feature matrix under real-time conditions, the correlation filtering position is trained, the number of dimensions is effectively reduced, and the feature fusion matrix is used to train the multiscale fast correlation filtering, with the result that the object's position and scale can be accurately predicted. The proposed algorithm is then compared with five popular correlation filtering tracking algorithms. Experimental results demonstrate that its average tracking speed reaches a reasonable frames/second velocity; moreover, it can also achieve promising object tracking results on the OTB benchmark data sets. The tracking accuracy is superior to that of the other five correlation filtering tracking algorithms when applied to scenes featuring object occlusion and changes in scale. The proposed algorithm also exhibits better robustness and improved performance under real-time conditions in sophisticated scenarios, including scale variation, deformation, fast motion, occlusion, and so on.

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