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Parallel tracking and detection for long-term object tracking

机译:长期对象跟踪的并行跟踪和检测

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High tracking frame rates have been achieved based on traditional tracking methods which however would fail due to drifts of the object template or model, especially when the object disappears from the camera’s field of view. To deal with it, tracking-and-detection-combination has become more and more popular for long-term unknown object tracking, whose detector almost does not drift and can regain the disappeared object when it comes back. However, for online machine learning and multiscale object detection, expensive computing resources and time are required. So it is not a good idea to combine tracking and detection sequentially like Tracking-Learning-Detection algorithm. Inspired from parallel tracking and mapping, this article proposes a framework of parallel tracking and detection for unknown object tracking. The object tracking algorithm is split into two separate tasks—tracking and detection which can be processed in two different threads, respectively. One thread is used to deal with the tracking between consecutive frames with a high processing speed. The other thread runs online learning algorithms to construct a discriminative model for object detection. Using our proposed framework, high tracking frame rates and the ability of correcting and recovering the failed tracker can be combined effectively. Furthermore, our framework provides open interfaces to integrate state-of-the-art object tracking and detection algorithms. We carry out an evaluation of several popular tracking and detection algorithms using the proposed framework. The experimental results show that different tracking and detection algorithms can be integrated and compared effectively by our proposed framework, and robust and fast long-term object tracking can be realized.
机译:基于传统的跟踪方法已经实现了高跟踪帧速率,然而由于对象模板或模型的漂移而导致的传统跟踪方法,尤其是当对象从相机的视野中消失时。要处理它,跟踪和检测组合对于长期未知对象跟踪已经变得越来越受欢迎,其探测器几乎不会漂移,并且可以在返回时重新获得消失的对象。但是,对于在线机器学习和多尺度对象检测,需要昂贵的计算资源和时间。因此,将跟踪和检测顺序相同地类似跟踪学习检测算法并不是一个好主意。从并行跟踪和映射启发,本文提出了一个并行跟踪和检测框架,以获取未知对象跟踪。对象跟踪算法分为两个单独的任务跟踪和检测,其可以分别在两个不同的线程中处理。一个线程用于处理具有高处理速度的连续帧之间的跟踪。另一个线程运行在线学习算法以构建用于对象检测的判别模型。可以使用我们所提出的框架,高跟踪帧速率和校正和恢复失败跟踪器的能力。此外,我们的框架提供了开放式接口,以集成最先进的对象跟踪和检测算法。我们使用所提出的框架进行几种流行的跟踪和检测算法进行评估。实验结果表明,通过我们所提出的框架可以实现不同的跟踪和检测算法,可以实现稳健和快速的长期物体跟踪。

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