CVDec 13, 2021

An Informative Tracking Benchmark

arXiv:2112.06467v16 citationsHas Code
Originality Synthesis-oriented
AI Analysis

This work addresses the need for a more efficient and discriminative benchmark for evaluating visual trackers, which is incremental as it refines existing benchmarking approaches.

The authors tackled the problem of inefficient and less informative visual tracking benchmarks by constructing a small and informative benchmark (ITB) using 7% of 1.2 million frames from existing and new datasets, enabling efficient evaluation while maintaining effectiveness.

Along with the rapid progress of visual tracking, existing benchmarks become less informative due to redundancy of samples and weak discrimination between current trackers, making evaluations on all datasets extremely time-consuming. Thus, a small and informative benchmark, which covers all typical challenging scenarios to facilitate assessing the tracker performance, is of great interest. In this work, we develop a principled way to construct a small and informative tracking benchmark (ITB) with 7% out of 1.2 M frames of existing and newly collected datasets, which enables efficient evaluation while ensuring effectiveness. Specifically, we first design a quality assessment mechanism to select the most informative sequences from existing benchmarks taking into account 1) challenging level, 2) discriminative strength, 3) and density of appearance variations. Furthermore, we collect additional sequences to ensure the diversity and balance of tracking scenarios, leading to a total of 20 sequences for each scenario. By analyzing the results of 15 state-of-the-art trackers re-trained on the same data, we determine the effective methods for robust tracking under each scenario and demonstrate new challenges for future research direction in this field.

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