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Augmenting Discriminative Correlation Filters with Stereo Blob Tracking for Long-Term Tracking of Underwater Animals

机译:用立体声追踪来增强辨别相关滤波器,用于跟踪水下动物的长期跟踪

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This paper presents a vision-based model-free longterm tracking algorithm to be used on-board autonomous underwater vehicles (AUVs) for long duration marine animal observation missions. During underwater tracking missions, drifting and losing track of targets after they leave the field of view are two major problems with state-of-the-art tracking algorithms. To achieve the long-term tracking goal, the proposed method gained drift resistance and target re-capturing ability by combining the merits of two mature short-term trackers: stereo blob tracking and discriminative correlation filter (DCF). In our approach, stereo blob tracking acts as complementary supervision to correct drift and to guide DCF to learn target appearances online before any tracking interruptions. The target information learned is then used to help re-capture the target after a tracking failure. In our experiments on field data, compared to running DCF alone, running the proposed augmented tracker increased average bounding box accuracy by 45% and eliminated drift-caused tracking failures. Our tracking algorithm also achieved 86% target re-capturing success.
机译:本文介绍了一种基于视觉的无模型长期跟踪算法,用于长期持续时间海洋动物观察任务的板载自主水下车辆(AUV)。在水下跟踪任务期间,在他们离开视野之后漂移和失去目标轨迹是最先进的跟踪算法的两个主要问题。为了实现长期跟踪目标,所提出的方法通过组合两个成熟短期跟踪器的优点来获得漂移阻力和目标重新捕获能力:立体声BLOB跟踪和鉴别相关滤波器(DCF)。在我们的方法中,立体声Blob跟踪作为互补监督,以纠正漂移,并指导DCF在任何跟踪中断之前在线学习目标。然后使用目标信息来帮助在跟踪失败后重新捕获目标。在我们对现场数据的实验中,与单独运行DCF相比,运行建议的增强跟踪器增加了平均边界框精度45%并消除了漂移导致的跟踪故障。我们的跟踪算法还实现了86%的目标重新捕获成功。

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