Siamese Natural Language Tracker: Tracking by Natural Language Descriptions with Siamese Trackers

Qi Feng, Vitaly Ablavsky, Qinxun Bai, S. Sclaroff
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引用次数: 18

Abstract

We propose a novel Siamese Natural Language Tracker (SNLT), which brings the advancements in visual tracking to the tracking by natural language (NL) descriptions task. The proposed SNLT is applicable to a wide range of Siamese trackers, providing a new class of baselines for the tracking by NL task and promising future improvements from the advancements of Siamese trackers. The carefully designed architecture of the Siamese Natural Language Region Proposal Network (SNL-RPN), together with the Dynamic Aggregation of vision and language modalities, is introduced to perform the tracking by NL task. Empirical results over tracking benchmarks with NL annotations show that the proposed SNLT improves Siamese trackers by 3 to 7 percentage points with a slight tradeoff of speed. The proposed SNLT outperforms all NL trackers to-date and is competitive among state-of-the-art real-time trackers on LaSOT benchmarks while running at 50 frames per second on a single GPU. Code for this work is available at https://github.com/fredfung007/snlt.
暹罗自然语言跟踪器:跟踪自然语言描述与暹罗跟踪器
我们提出了一种新的Siamese自然语言跟踪器(SNLT),它将视觉跟踪的进步引入到自然语言描述跟踪任务中。所提出的SNLT适用于广泛的Siamese跟踪器,为NL任务跟踪提供了一类新的基线,并有望从Siamese跟踪器的进步中得到未来的改进。引入精心设计的Siamese自然语言区域建议网络(SNL-RPN)架构,结合视觉和语言模态的动态聚合,实现自然语言任务的跟踪。使用NL注释跟踪基准测试的经验结果表明,建议的SNLT将Siamese跟踪器提高了3到7个百分点,同时稍微牺牲了速度。提议的SNLT优于迄今为止所有的NL跟踪器,并且在LaSOT基准测试中具有最先进的实时跟踪器的竞争力,同时在单个GPU上以每秒50帧的速度运行。这项工作的代码可在https://github.com/fredfung007/snlt上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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