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A Shared Representation for Object Tracking and Classification using Siamese Networks

机译:使用暹罗网络进行对象跟踪和分类的共享表示

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Recently, Siamese neural networks have been employed to build several high performance object trackers capable of operating in real time. To further improve the tracking performance, one can train one network on the tracking task and another network on the task of object classification. One can then use the feature representations of both networks to obtain a tracker which performs better than each network on its own. This approach, however, has the downside that two networks have to be evaluated instead of one, resulting in runtime degradation. We demonstrate that it is feasible to train one Siamese network on the tracking and the classifications tasks simultaneously. Specifically, we achieve a tracking performance similar to the performance of two networks trained on tracking and classification separately. Since our approach does not depend on two separate networks though, it allows one to improve the performance of a Siamese network tracker without any runtime penalty.
机译:最近,暹罗神经网络已被用来构建能够实时运行的几种高性能物体跟踪器。为了进一步提高跟踪性能,可以在跟踪任务上训练一个网络,而在对象分类任务上训练另一个网络。然后,可以使用两个网络的特征表示来获得跟踪器,该跟踪器的性能要优于每个网络本身。但是,这种方法的缺点是必须评估两个网络而不是一个网络,从而导致运行时间降低。我们证明在跟踪和分类任务上同时训练一个暹罗网络是可行的。具体而言,我们获得的跟踪性能类似于分别在跟踪和分类方面训练的两个网络的性能。由于我们的方法不依赖于两个独立的网络,因此它可以使Siamese网络跟踪器的性能得到提高,而不会增加运行时间。

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