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ARKitTrack: A New Diverse Dataset for Tracking Using Mobile RGB-D Data

About

Compared with traditional RGB-only visual tracking, few datasets have been constructed for RGB-D tracking. In this paper, we propose ARKitTrack, a new RGB-D tracking dataset for both static and dynamic scenes captured by consumer-grade LiDAR scanners equipped on Apple's iPhone and iPad. ARKitTrack contains 300 RGB-D sequences, 455 targets, and 229.7K video frames in total. Along with the bounding box annotations and frame-level attributes, we also annotate this dataset with 123.9K pixel-level target masks. Besides, the camera intrinsic and camera pose of each frame are provided for future developments. To demonstrate the potential usefulness of this dataset, we further present a unified baseline for both box-level and pixel-level tracking, which integrates RGB features with bird's-eye-view representations to better explore cross-modality 3D geometry. In-depth empirical analysis has verified that the ARKitTrack dataset can significantly facilitate RGB-D tracking and that the proposed baseline method compares favorably against the state of the arts. The code and dataset is available at https://arkittrack.github.io.

Haojie Zhao, Junsong Chen, Lijun Wang, Huchuan Lu• 2023

Related benchmarks

TaskDatasetResultRank
Visual Object TrackingDepthTrack
Precision0.617
41
Visual Object TrackingARKitTrack (test)
Precision48.8
12
Visual Object TrackingCDTB
Precision71.1
12
Video Object SegmentationARKitTrack VOS (test)
J&F66.2
6
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