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ViCoS Lab

Authors

Alan Lukežič, PhD
Alan Lukežič, PhD
Žiga Trojer
Žiga Trojer
Jiří Matas
Jiří Matas
Matej Kristan, PhD
Matej Kristan, PhD

Links

  •   GitHub repository
  •   Document

Tags

tracking

Trans2k: Unlocking the Power of Deep Models for Transparent Object Tracking

Alan Lukežič, Žiga Trojer, Jiří Matas and Matej Kristan
In Proceedings of the British Machine Vision Conference (BMVC), 2022,

Visual object tracking has focused predominantly on opaque objects, while transparent object tracking received very little attention. Motivated by the uniqueness of transparent objects in that their appearance is directly affected by the background, the first dedicated evaluation dataset has emerged recently. We contribute to this effort by proposing the first transparent object tracking training dataset Trans2k that consists of over 2k sequences with 104,343 images overall, annotated by bounding boxes and segmentation masks. Noting that transparent objects can be realistically rendered by modern renderers, we quantify domain-specific attributes and render the dataset containing visual attributes and tracking situations not covered in the existing object training datasets. We observe a consistent performance boost (up to 16%) across a diverse set of modern tracking architectures when trained using Trans2k, and show insights not previously possible due to the lack of appropriate training sets. The dataset and the rendering engine will be publicly released to unlock the power of modern learning-based trackers and foster new designs in transparent object tracking.

Faculty of Computer and Information Science

Visual Cognitive Systems Laboratory

University of Ljubljana

Faculty of Computer and Information Science

Večna pot 113
SI-1000 Ljubljana
Slovenia
Tel.: +386 1 479 8245