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{Yihong Gong Dahu Shi Yongchao Zheng Yifan Bai Xing Wei}

Abstract
We present ARTrack, an autoregressive framework for visual object tracking. ARTrack tackles tracking as a coordinate sequence interpretation task that estimates object trajectories progressively, where the current estimate is induced by previous states and in turn affects subsequences. This time-autoregressive approach models the sequential evolution of trajectories to keep tracing the object across frames, making it superior to existing template matching based trackers that only consider the per-frame localization accuracy. ARTrack is simple and direct, eliminating customized localization heads and post-processings. Despite its simplicity, ARTrack achieves state-of-the-art performance on prevailing benchmark datasets.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| video-object-tracking-on-nv-vot211 | ARTrack-L | AUC: 35.92 Precision: 51.64 |
| visual-object-tracking-on-got-10k | ARTrack-L | Average Overlap: 78.5 Success Rate 0.5: 87.4 Success Rate 0.75: 77.8 |
| visual-object-tracking-on-lasot | ARTrack-L | AUC: 73.1 Normalized Precision: 82.2 Precision: 80.3 |
| visual-object-tracking-on-lasot-ext | ARTrack-L | AUC: 52.8 Normalized Precision: 62.9 Precision: 59.7 |
| visual-object-tracking-on-tnl2k | ARTrack-L | AUC: 60.3 |
| visual-object-tracking-on-trackingnet | ARTrack-L | Accuracy: 85.6 Normalized Precision: 89.6 Precision: 86.0 |
| visual-object-tracking-on-uav123 | ARTrack-L | AUC: 0.712 |
| visual-tracking-on-tnl2k | ARTrack-L | AUC: 60.3 |
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