Planar object tracking is a critical computer vision problem and has drawn
increasing interest owing to its key roles in robotics, augmented reality, etc.
Despite rapid progress, its further development, especially in the deep
learning era, is largely hindered due to the lack of large-scale challenging
benchmarks. Addressing this, we introduce PlanarTrack, a large-scale
challenging planar tracking benchmark. Specifically, PlanarTrack consists of
1,000 videos with more than 490K images. All these videos are collected in
complex unconstrained scenarios from the wild, which makes PlanarTrack,
compared with existing benchmarks, more challenging but realistic for
real-world applications. To ensure the high-quality annotation, each frame in
PlanarTrack is manually labeled using four corners with multiple-round careful
inspection and refinement. To our best knowledge, PlanarTrack, to date, is the
largest and most challenging dataset dedicated to planar object tracking. In
order to analyze the proposed PlanarTrack, we evaluate 10 planar trackers and
conduct comprehensive comparisons and in-depth analysis. Our results, not
surprisingly, demonstrate that current top-performing planar trackers
degenerate significantly on the challenging PlanarTrack and more efforts are
needed to improve planar tracking in the future. In addition, we further derive
a variant named PlanarTrackBB​ for generic object tracking from
PlanarTrack. Our evaluation of 10 excellent generic trackers on
PlanarTrackBB​ manifests that, surprisingly,
PlanarTrackBB​ is even more challenging than several popular
generic tracking benchmarks and more attention should be paid to handle such
planar objects, though they are rigid. All benchmarks and evaluations will be
released at the project webpage.Comment: Tech. Repor