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3 months ago

Revisiting Color-Event based Tracking: A Unified Network, Dataset, and Metric

Chuanming Tang Xiao Wang Ju Huang Bo Jiang Lin Zhu Jianlin Zhang Yaowei Wang Yonghong Tian

Revisiting Color-Event based Tracking: A Unified Network, Dataset, and Metric

Abstract

Combining the Color and Event cameras (also called Dynamic Vision Sensors, DVS) for robust object tracking is a newly emerging research topic in recent years. Existing color-event tracking framework usually contains multiple scattered modules which may lead to low efficiency and high computational complexity, including feature extraction, fusion, matching, interactive learning, etc. In this paper, we propose a single-stage backbone network for Color-Event Unified Tracking (CEUTrack), which achieves the above functions simultaneously. Given the event points and RGB frames, we first transform the points into voxels and crop the template and search regions for both modalities, respectively. Then, these regions are projected into tokens and parallelly fed into the unified Transformer backbone network. The output features will be fed into a tracking head for target object localization. Our proposed CEUTrack is simple, effective, and efficient, which achieves over 75 FPS and new SOTA performance. To better validate the effectiveness of our model and address the data deficiency of this task, we also propose a generic and large-scale benchmark dataset for color-event tracking, termed COESOT, which contains 90 categories and 1354 video sequences. Additionally, a new evaluation metric named BOC is proposed in our evaluation toolkit to evaluate the prominence with respect to the baseline methods. We hope the newly proposed method, dataset, and evaluation metric provide a better platform for color-event-based tracking. The dataset, toolkit, and source code will be released on: \url{https://github.com/Event-AHU/COESOT}.

Code Repositories

wangxiao5791509/VisEvent_SOT_Benchmark
Official
pytorch
Mentioned in GitHub
event-ahu/coesot
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
object-tracking-on-coesotCEUTrack-Base
Precision Rate: 70.5
Success Rate: 62.0
object-tracking-on-coesotCEUTrack-Large
Precision Rate: 71.4
Success Rate: 62.8

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