VisEvent: Reliable Object Tracking via Collaboration of Frame and Event Flows

Visualization of VisEvent Tracking Dataset

OTB VisEvent dataset (V2E used)

Video Tutorial

Highlights

  • Realistic Videos: The videos are collected from multiple scenarios in the wild;

  • Large-scale: 820 video sequences (RGB video + Event flows), contains 371,128 frames, 500 / 320 for the train / testing respectively;

  • Balanced Distribution between RGB and Event Streams: The cases where tracking with single modality can already realize high performance should be avoided;

  • High-quality Dense Annotation: Manual annotation with careful inspection in each frame;

  • Support Both Short- and Long-term Tracking: 709 and 111 videos for short and long-term;

  • Multiple-baseline: More than 35 dual-modality SOTA trackers. [Code]

Background

Different from visible cameras which record intensity images frame by frame, the biologically inspired event camera produces a stream of asynchronous and sparse events with much lower latency. In practice, the visible cameras can better perceive texture details and slow motion, while event cameras can be free from motion blurs and have a larger dynamic range which enables them to work well under fast motion and low illumination. Therefore, the two sensors can cooperate with each other to achieve more reliable object tracking. In this work, we propose a large-scale Visible-Event benchmark (termed VisEvent) due to the lack of a realistic and scaled dataset for this task. Our dataset consists of 820 video pairs captured under low illumination, high speed, and background clutter scenarios, and it is divided into a training and a testing subset, each of which contains 500 and 320 videos, respectively. Based on VisEvent, we transform the event flows into event images and construct more than 30 baseline methods by extending current single-modality trackers into dual-modality versions. More importantly, we further build a simple but effective tracking algorithm by proposing a cross-modality transformer, to achieve more effective feature fusion between visible and event data. Extensive experiments on the proposed VisEvent dataset, and two simulated dataset (i.e., OTB-DVS and VOT-DVS), validated the effectiveness of our model.


Experimental Results:


Citation

If you find this work helpful for your research, please cite this work:

@article{wang2021viseventbenchmark,

title={VisEvent: Reliable Object Tracking via Collaboration of Frame and Event Flows},

author={Xiao Wang, Jianing Li, Lin Zhu, Zhipeng Zhang, Zhe Chen, Xin Li, Yaowei Wang, Yonghong Tian, Feng Wu},

journal={arXiv:2108.05015},

year={2021}

}


If you have any questions or suggestions on this work, please contact the first author via wangxiaocvpr@foxmail.com.