| Literature DB >> 35890899 |
Xiuhua Hu1,2, Huan Liu1,2, Yan Hui1,2, Xi Wu1,2, Jing Zhao1,2.
Abstract
This paper proposes a tracking method combining feature enhancement and template update, aiming to solve the problems of existing trackers lacking global information attention, weak feature characterization ability, and not being well adapted to the changing appearance of the target. Pre-extracted features are enhanced in context and on channels through a feature enhancement network consisting of channel attention and transformer architectures. The enhanced feature information is input into classification and regression networks to achieve the final target state estimation. At the same time, the template update strategy is introduced to update the sample template judiciously. Experimental results show that the proposed tracking method exhibits good tracking performance on the OTB100, LaSOT, and GOT-10k benchmark datasets.Entities:
Keywords: feature enhancement; object tracking; template update strategy; transformer architectures
Mesh:
Year: 2022 PMID: 35890899 PMCID: PMC9320290 DOI: 10.3390/s22145219
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1Overall framework of object tracking method based on transformer feature enhancement network with template update.
Figure 2Diagram for fusion of shallow features and deep features.
Figure 3Schematic diagram of channel attention.
Figure 4Principle diagram of transformer structure.
Figure 5Principle diagram of template update strategy based on classification branch.
Figure 6Performance evaluation results of different algorithms on OTB100 dataset. (a) Precision plots; (b) success plots.
Figure 7Performance evaluation results of different algorithms on OTB100 dataset for various attributes.
Figure 8Performance evaluation results of different algorithms on LaSOT dataset. (a) Normalized precision plots; (b) success plots.
Performance results of SOTA tracker with an update mechanism on the LaSOT dataset.
| Methods | AUC |
|
|---|---|---|
| OurNet_update | 52.2 |
|
| OurNet | 51.6 | 60.0 |
| TrTr-online |
| - |
| TrTr-offline | 46.3 | - |
| UpdateNet-DaSiamPRN | 47.5 | 56.0 |
| UpdateNet-SiamFC | 34.9 | 43.7 |
| DSiam | 30.3 | 40.5 |
| ECO | 32.4 | 33.8 |
Figure 9Comparison results of the GOT-10k benchmark.
Performance comparison on GOT-10k benchmark.
| Methods | AO |
|
|
|---|---|---|---|
| OurNet-update |
|
|
|
| OurNet | 55.2 | 66 | 40.8 |
| ATOM | 55.0 | 63.4 | 40.2 |
| SiamRPN++ | 51.7 | 61.6 | 32.5 |
| SPM | 51.3 | 59.3 | 35.9 |
| SiamRPN | 46.3 | 54.9 | 25.3 |
| THOR | 44.7 | 53.8 | 20.4 |
| SiamFCv2 | 37.4 | 40.4 | 14.4 |
| SiamFC | 34.8 | 35.3 | 9.8 |
| GOTURN | 34.7 | 37.5 | 12.4 |
| ECO | 31.6 | 30.9 | 11.1 |
| MDNet | 29.9 | 30.3 | 9.9 |
| Staple | 24.6 | 23.9 | 8.9 |
| SRDCF | 23.6 | 22.7 | 9.4 |
Figure 10Sample tracking results of evaluated algorithms on different challenging sequences.