用于目标跟踪的注意卷积神经网络

Xiangdong Kong, Baochang Zhang, Lei Yue, Zehao Xiao
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引用次数: 0

摘要

随着低空空域的开放,基于航空监视的无人机开始在交通运输系统中得到广泛应用。目视目标跟踪以其准确性和时效性在航空监视中发挥着重要作用。虽然传统的跟踪器已经取得了很大的进步,但在复杂的场景中,如遮挡、光照变化、背景杂波等,仍然容易失效。为了利用外观特征来区分物体和周围环境,我们提出了一种新的结构,称为注意卷积神经网络(ACNN),结合离线训练和在线学习来进行物体跟踪。ACNN由一个主干和几个分支组成,主干配备了突出有趣对象的注意块,分支分别负责特定的训练序列。在跟踪阶段,去除所有分支,增加一个新的全连接层(fc)来完成二值分类。我们将概率最大的候选人作为当前目标。在公共基准上的大量实验结果表明,我们的方法与最先进的方法相比表现出色。此外,为了实际应用,我们还研究了网络层数与跟踪性能之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attentional convolutional neural networks for object tracking
As low-altitude airspace opens up, aeronautical surveillance based Unmanned Aerial Vehicle (UAV) has started to be widely used in the transportation system. Visual object tracking plays an important role in aeronautical surveillance for its accuracy and timeliness. Although traditional trackers have made great progress, they still tend to fail in complex scenes, such as occlusions, illumination variations, background clutter, and etc. In order to make use of appearance features to distinguish the object and surroundings, we propose a novel architecture called attentional convolutional neural networks (ACNN) in conjunction with offline training and online learning for object tracking. ACNN consists of a trunk equipped with attention blocks that highlight the interesting object, and several branches, which are respectively responsible for specific training sequences. In the tracking stage, all branches are removed and a new fully-connected (fc) layer is added to accomplish binary classification. We regard the candidate with the highest probability as current target. Extensive experimental results on public benchmark show that our method performs outstandingly against state-of-the-art methods. In addition, we have also investigated the relationship between the number of network layers and tracking performance for its practical use.
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