基于暹罗区域建议网络的高性能视觉跟踪

Bo Li, Junjie Yan, Wei Wu, Zheng Zhu, Xiaolin Hu
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引用次数: 1754

摘要

近年来,视觉对象跟踪一直是一个基本的主题,许多基于深度学习的跟踪器已经在多个基准测试中取得了最先进的性能。然而,大多数跟踪器很难在实时速度下获得最佳性能。本文提出了基于大规模图像对的端到端离线训练的暹罗区域建议网络(Siamese- rpn)。其中包括用于特征提取的暹罗子网络和包含分类分支和回归分支的区域建议子网络。在推理阶段,提出的框架被表述为局部单次检测任务。我们可以预先计算暹罗子网络的模板分支,并将相关层表示为平凡卷积层来进行在线跟踪。得益于提议的细化,传统的多尺度测试和在线微调可以被抛弃。Siamese-RPN以160 FPS的速度运行,在VOT2015、VOT2016和VOT2017实时挑战中取得了领先的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High Performance Visual Tracking with Siamese Region Proposal Network
Visual object tracking has been a fundamental topic in recent years and many deep learning based trackers have achieved state-of-the-art performance on multiple benchmarks. However, most of these trackers can hardly get top performance with real-time speed. In this paper, we propose the Siamese region proposal network (Siamese-RPN) which is end-to-end trained off-line with large-scale image pairs. Specifically, it consists of Siamese subnetwork for feature extraction and region proposal subnetwork including the classification branch and regression branch. In the inference phase, the proposed framework is formulated as a local one-shot detection task. We can pre-compute the template branch of the Siamese subnetwork and formulate the correlation layers as trivial convolution layers to perform online tracking. Benefit from the proposal refinement, traditional multi-scale test and online fine-tuning can be discarded. The Siamese-RPN runs at 160 FPS while achieving leading performance in VOT2015, VOT2016 and VOT2017 real-time challenges.
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