AAA: Adaptive Aggregation of Arbitrary Online Trackers with Theoretical Performance Guarantee
About
For visual object tracking, it is difficult to realize an almighty online tracker due to the huge variations of target appearance depending on an image sequence. This paper proposes an online tracking method that adaptively aggregates arbitrary multiple online trackers. The performance of the proposed method is theoretically guaranteed to be comparable to that of the best tracker for any image sequence, although the best expert is unknown during tracking. The experimental study on the large variations of benchmark datasets and aggregated trackers demonstrates that the proposed method can achieve state-of-the-art performance. The code is available at https://github.com/songheony/AAA-journal.
Heon Song, Daiki Suehiro, Seiichi Uchida• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Visual Object Tracking | LaSOT (test) | AUC51 | 444 | |
| Visual Object Tracking | UAV123 (test) | AUC60 | 188 | |
| Visual Object Tracking | UAV123 | AUC0.62 | 165 | |
| Visual Object Tracking | NfS | AUC0.61 | 112 | |
| Object Tracking | OTB 2015 (test) | AUC0.7 | 63 | |
| Visual Object Tracking | VOT 2018 (test) | -- | 54 | |
| Visual Object Tracking | LaSoT | AUC53 | 44 | |
| Visual Object Tracking | TC128 (test) | Success AUC62 | 26 | |
| Visual Object Tracking | TColor128 | DP82 | 11 | |
| Visual Object Tracking | VOT 2018 | AUC0.52 | 10 |
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