Confidence Trigger Detection: Accelerating Real-time Tracking-by-detection Systems
Abstract
Real-time object tracking necessitates a delicate balance between speed and accuracy, a challenge exacerbated by the computational demands of deep learning methods. In this paper, we propose Confidence-Triggered Detection (CTD), an innovative approach that strategically bypasses object detection for frames closely resembling intermediate states, leveraging tracker confidence scores. CTD not only enhances tracking speed but also preserves accuracy, surpassing existing tracking algorithms. Through extensive evaluation across various tracker confidence thresholds, we identify an optimal trade-off between tracking speed and accuracy, providing crucial insights for parameter fine-tuning and enhancing CTD's practicality in real-world scenarios. Our experiments across diverse detection models underscore the robustness and versatility of the CTD framework, demonstrating its potential to enable real-time tracking in resource-constrained environments.
Cite
@article{arxiv.1902.00615,
title = {Confidence Trigger Detection: Accelerating Real-time Tracking-by-detection Systems},
author = {Zhicheng Ding and Zhixin Lai and Siyang Li and Panfeng Li and Qikai Yang and Edward Wong},
journal= {arXiv preprint arXiv:1902.00615},
year = {2024}
}
Comments
Accepted by 2024 5th International Conference on Electronic Communication and Artificial Intelligence