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首页> 外文期刊>Eurasip Journal on Wireless Communications and Networking >Object tracking framework with Siamese network and re-detection mechanism
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Object tracking framework with Siamese network and re-detection mechanism

机译:与暹罗网络和重新检测机制的对象跟踪框架

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摘要

To improve the deficient tracking ability of fully-convolutional Siamese networks (SiamFC) in complex scenes, an object tracking framework with Siamese network and re-detection mechanism (Siam-RM) is proposed. The mechanism adopts the Siamese instance search tracker (SINT) as the re-detection network. When multiple peaks appear on the response map of SiamFC, a more accurate re-detection network can re-determine the location of the object. Meanwhile, for the sake of adapting to various changes in appearance of the object, this paper employs a generative model to construct the templates of SiamFC. Furthermore, a method of template updating with high confidence is also used to prevent the template from being contaminated. Objective evaluation on the popular online tracking benchmark (OTB) shows that the tracking accuracy and the success rate of the proposed framework can reach 79.8% and 63.8%, respectively. Compared to SiamFC, the results of several representative video sequences demonstrate that our framework has higher accuracy and robustness in scenes with fast motion, occlusion, background clutter, and illumination variations.
机译:为了提高全卷积的暹罗网络(SIAMFC)在复杂场景中的缺陷跟踪能力,提出了一种具有暹罗网络和重新检测机制(SIAM-RM)的对象跟踪框架。该机制采用暹罗实例搜索跟踪器(SINT)作为重新检测网络。当SIAMFC的响应图上出现多个峰值时,更准确的重新检测网络可以重新确定对象的位置。同时,为了适应对象外观的各种变化,本文采用了一种生成模型来构建SIAMFC的模板。此外,使用高置信度的模板更新方法也用于防止模板被污染。对流行的在线跟踪基准(OTB)的客观评估表明,拟议框架的跟踪准确性和成功率分别达到79.8%和63.8%。与SIAMFC相比,几个代表性视频序列的结果表明,我们的框架在具有快速运动,闭塞,背景杂波和照明变化的场景中具有更高的准确性和鲁棒性。

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