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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

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tracking

A New Dataset and a Distractor-Aware Architecture for Transparent Object Tracking

Alan Lukežič, Žiga Trojer, Jiří Matas and Matej Kristan
International Journal of Computer Vision, Springer, 2024,

Performance of modern trackers degrades substantially on transparent objects compared to opaque objects. This is largely due to two distinct reasons. Transparent objects are unique in that their appearance is directly affected by the background. Furthermore, transparent object scenes often contain many visually similar objects (distractors), which often lead to tracking failure. However, development of modern tracking architectures requires large training sets, which do not exist in transparent object tracking. We present two contributions addressing the aforementioned issues. We propose 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. Standard trackers trained on this dataset consistently improve by up to 16%. Our second contribution is a new distractor-aware transparent object tracker (DiTra) that treats localization accuracy and target identification as separate tasks and implements them by a novel architecture. DiTra sets a new state-of-the-art in transparent object tracking and generalizes well to opaque objects.

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