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Papers/PointOdyssey: A Large-Scale Synthetic Dataset for Long-Ter...

PointOdyssey: A Large-Scale Synthetic Dataset for Long-Term Point Tracking

Yang Zheng, Adam W. Harley, Bokui Shen, Gordon Wetzstein, Leonidas J. Guibas

2023-07-27ICCV 2023 1Point Tracking
PaperPDFCodeCodeCode(official)

Abstract

We introduce PointOdyssey, a large-scale synthetic dataset, and data generation framework, for the training and evaluation of long-term fine-grained tracking algorithms. Our goal is to advance the state-of-the-art by placing emphasis on long videos with naturalistic motion. Toward the goal of naturalism, we animate deformable characters using real-world motion capture data, we build 3D scenes to match the motion capture environments, and we render camera viewpoints using trajectories mined via structure-from-motion on real videos. We create combinatorial diversity by randomizing character appearance, motion profiles, materials, lighting, 3D assets, and atmospheric effects. Our dataset currently includes 104 videos, averaging 2,000 frames long, with orders of magnitude more correspondence annotations than prior work. We show that existing methods can be trained from scratch in our dataset and outperform the published variants. Finally, we introduce modifications to the PIPs point tracking method, greatly widening its temporal receptive field, which improves its performance on PointOdyssey as well as on two real-world benchmarks. Our data and code are publicly available at: https://pointodyssey.com

Results

TaskDatasetMetricValueModel
Visual TrackingTAP-VidMTE4.6PIPs++
Visual TrackingTAP-VidSurvival88.42PIPs++
Visual TrackingTAP-Vidδ63.45PIPs++
Visual TrackingPointOdysseyMTE26.95PIPs++
Visual TrackingPointOdysseySurvival50.47PIPs++
Visual TrackingPointOdysseyδ33.64PIPs++
Visual TrackingPointOdysseySurvival49.88PIPs+
Visual TrackingPointOdysseyδ32.41PIPs+
Point TrackingTAP-VidMTE4.6PIPs++
Point TrackingTAP-VidSurvival88.42PIPs++
Point TrackingTAP-Vidδ63.45PIPs++
Point TrackingPointOdysseyMTE26.95PIPs++
Point TrackingPointOdysseySurvival50.47PIPs++
Point TrackingPointOdysseyδ33.64PIPs++
Point TrackingPointOdysseySurvival49.88PIPs+
Point TrackingPointOdysseyδ32.41PIPs+

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