UniSOT: A Unified Framework for Multi-Modality Single Object Tracking
By: Yinchao Ma , Yuyang Tang , Wenfei Yang and more
Potential Business Impact:
Tracks anything in videos, any way you describe it.
Single object tracking aims to localize target object with specific reference modalities (bounding box, natural language or both) in a sequence of specific video modalities (RGB, RGB+Depth, RGB+Thermal or RGB+Event.). Different reference modalities enable various human-machine interactions, and different video modalities are demanded in complex scenarios to enhance tracking robustness. Existing trackers are designed for single or several video modalities with single or several reference modalities, which leads to separate model designs and limits practical applications. Practically, a unified tracker is needed to handle various requirements. To the best of our knowledge, there is still no tracker that can perform tracking with these above reference modalities across these video modalities simultaneously. Thus, in this paper, we present a unified tracker, UniSOT, for different combinations of three reference modalities and four video modalities with uniform parameters. Extensive experimental results on 18 visual tracking, vision-language tracking and RGB+X tracking benchmarks demonstrate that UniSOT shows superior performance against modality-specific counterparts. Notably, UniSOT outperforms previous counterparts by over 3.0\% AUC on TNL2K across all three reference modalities and outperforms Un-Track by over 2.0\% main metric across all three RGB+X video modalities.
Similar Papers
Omni Survey for Multimodality Analysis in Visual Object Tracking
CV and Pattern Recognition
Helps cameras track moving things using multiple senses.
Serial Over Parallel: Learning Continual Unification for Multi-Modal Visual Object Tracking and Benchmarking
CV and Pattern Recognition
Makes tracking objects faster and more accurate.
Tracking and Segmenting Anything in Any Modality
CV and Pattern Recognition
Lets computers understand any video task.