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Robust and real-time deep tracking via multi-scale domain adaptation

机译:通过多尺度域自适应实现强大的实时深度跟踪

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Visual tracking is a fundamental problem in computer vision. Recently, some deep-learning-based tracking algorithms have been achieving record-breaking performances. However, due to the high complexity of deep learning, most deep trackers suffer from low tracking speed, and thus are impractical in many real-world applications. Some new deep trackers with smaller network structure achieve high efficiency while at the cost of significant decrease on precision. In this paper, we propose to transfer the feature for image classification to the visual tracking domain via convolutional channel reductions. The channel reduction could be simply viewed as an additional convolutional layer with the specific task. It not only extracts useful information for object tracking but also significantly increases the tracking speed. To better accommodate the useful feature of the target in different scales, the adaptation filters are designed with different sizes. The yielded visual tracker is real-time and also illustrates the state-of-the-art accuracies in the experiment involving two well-adopted benchmarks with more than 100 test videos.
机译:视觉跟踪是计算机视觉中的一个基本问题。最近,一些基于深度学习的跟踪算法已经实现了创纪录的性能。但是,由于深度学习的高度复杂性,大多数深度跟踪器的跟踪速度较低,因此在许多实际应用中不切实际。一些具有较小网络结构的新型深度跟踪器可实现高效率,但同时会大大降低精度。在本文中,我们建议通过卷积通道缩减将图像分类功能转移到视觉跟踪域。可以将信道减少简单地视为具有特定任务的附加卷积层。它不仅可以提取有用的信息以进行目标跟踪,而且还可以大大提高跟踪速度。为了更好地适应不同规模目标的有用功能,自适应滤波器的设计尺寸不同。产生的视觉跟踪器是实时的,还说明了该实验的最新准确性,该实验涉及两个公认的基准测试以及100多个测试视频。

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