Mathematics (Jun 2022)

Lightweight Target-Aware Attention Learning Network-Based Target Tracking Method

  • Yanchun Zhao,
  • Jiapeng Zhang,
  • Rui Duan,
  • Fusheng Li,
  • Huanlong Zhang

DOI
https://doi.org/10.3390/math10132299
Journal volume & issue
Vol. 10, no. 13
p. 2299

Abstract

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Siamese network trackers based on pre-trained depth features have achieved good performance in recent years. However, the pre-trained depth features are trained in advance on large-scale datasets, which contain feature information of a large number of objects. There may be a pair of interference and redundant information for a single tracking target. To learn a more accurate target feature information, this paper proposes a lightweight target-aware attention learning network to learn the most effective channel features of the target online. The lightweight network uses a designed attention learning loss function to learn a series of channel features with weights online with no complex parameters. Compared with the pre-trained features, the channel features with weights can represent the target more accurately. Finally, the lightweight target-aware attention learning network is unified into a Siamese tracking network framework to implement target tracking effectively. Experiments on several datasets demonstrate that the tracker proposed in this paper has good performance.

Keywords