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Using synthetic data for person tracking under adverse weather conditions

机译:在恶劣天气条件下使用合成数据进行人员跟踪

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Robust visual tracking plays a vital role in many areas such as autonomous cars, surveillance and robotics. Recent trackers were shown to achieve adequate results under normal tracking scenarios with clear weather conditions, standard camera setups and lighting conditions. Yet, the performance of these trackers, whether they are corre-lation filter-based or learning-based, degrade under adverse weather conditions. The lack of videos with such weather conditions, in the available visual object tracking datasets, is the prime issue behind the low perfor-mance of the learning-based tracking algorithms. In this work, we provide a new person tracking dataset of real-world sequences (PTAW172Real) captured under foggy, rainy and snowy weather conditions to assess the performance of the current trackers. We also introduce a novel person tracking dataset of synthetic sequences (PTAW217Synth) procedurally generated by our NOVA framework spanning the same weather conditions in varying severity to mitigate the problem of data scarcity. Our experimental results demonstrate that the perfor-mances of the state-of-the-art deep trackers under adverse weather conditions can be boosted when the avail-able real training sequences are complemented with our synthetically generated dataset during training. (c) 2021 Elsevier B.V. All rights reserved.
机译:强大的视觉跟踪在自主车,监视和机器人等许多领域起着至关重要的作用。最近的跟踪器显示在正常跟踪方案下实现了足够的结果,具有清晰的天气条件,标准摄像头设置和照明条件。然而,这些跟踪器的性能,无论它们是基于相关的滤波器还是基于学习,在恶劣天气条件下都会降低。在可用的可视化对象跟踪数据集中缺乏具有此类天气条件的视频,是基于学习的跟踪算法的低密度漫步之后的主要问题。在这项工作中,我们提供了一个新的人跟踪数据集(PTAW172REAL)在有雾,多雨和雪天气条件下捕获的,以评估当前跟踪器的性能。我们还介绍了由我们的Nova框架的合成序列(PTAW217Synth)的新颖人员跟踪数据集,这些框架在不同的严重程度中产生了相同的天气条件,以减轻数据稀缺问题。我们的实验结果表明,当可用的真实训练序列与我们在训练期间的合成生成的数据集补充时,可以提高最先进的天气条件下的完美的深度跟踪器的穿孔。 (c)2021 elestvier b.v.保留所有权利。

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