4.2 Article

Visual object tracking based on residual network and cascaded correlation filters

期刊

出版社

SPRINGER HEIDELBERG
DOI: 10.1007/s12652-020-02572-0

关键词

Object tracking; Deep learning; Residual network; Resnet features; Cascaded correlation filters

资金

  1. National Natural Science Foundation of China [61972056, 61772454]
  2. Double First-class International Cooperation and Development Scientific Research Project of Changsha University of Science and Technology [2019IC34]
  3. Postgraduate Scientific Research Innovation Fund of Hunan Province [CX20190696, CX20190695]
  4. Postgraduate Training Innovation Base Construction Project of Hunan Province [2019-248-51]

向作者/读者索取更多资源

This study proposes a tracking algorithm based on deep residual networks and cascaded correlation filters to enhance the accuracy and precision of object tracking. By combining handcraft features and Resnet features, as well as utilizing the deeper Resnet-101 network for feature extraction, superior performance is achieved.
Significant progress is made in the field of object tracking recently. Especially, trackers based on deep learning and correlation filters both have achieved excellent performance. However, object tracking still faces some challenging problems such as deformation and illumination. In such kinds of situations, the accuracy and precision of tracking algorithms plunge as a result. It is imminent to find a solution to this situation. In this paper, we propose a tracking algorithm based on features extracted by residual network called Resnet features and cascaded correlation filters to improve precision and accuracy. Firstly, features extracted by a deep residual network trained on other image processing datasets, are robust enough and retain higher resolution, therefore, we exploit Resnet-101 pretrained offline to obtain features extracted by middle and high layers for target appearance model representation. Resnet-101 is deeper compared with other deep neural networks which means it contains more semantic information. Then, the method we propose to combine our correlation filters is superior. We propose cascaded correlation filters generated by handcraft, middle-level and high-level features from residual network to gain better competence. Handcraft features localize target precisely because they contain more spatial details while Resnet features are robust to the target appearance change because they retain more semantic information. Finally, we conduct extensive experiments on OTB2013 and OTB2015 benchmark. The experimental results show that our tracker achieves high performance under all kinds of challenges and performs favorably against other state-of-the-art trackers.

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