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Learning Attentions: Residual Attentional Siamese Network for High Performance Online Visual Tracking

机译:学习注意力:残余注意力连体网络,用于高性能的在线视觉跟踪

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Offline training for object tracking has recently shown great potentials in balancing tracking accuracy and speed. However, it is still difficult to adapt an offline trained model to a target tracked online. This work presents a Residual Attentional Siamese Network (RASNet) for high performance object tracking. The RASNet model reformulates the correlation filter within a Siamese tracking framework, and introduces different kinds of the attention mechanisms to adapt the model without updating the model online. In particular, by exploiting the offline trained general attention, the target adapted residual attention, and the channel favored feature attention, the RASNet not only mitigates the over-fitting problem in deep network training, but also enhances its discriminative capacity and adaptability due to the separation of representation learning and discriminator learning. The proposed deep architecture is trained from end to end and takes full advantage of the rich spatial temporal information to achieve robust visual tracking. Experimental results on two latest benchmarks, OTB-2015 and VOT2017, show that the RASNet tracker has the state-of-the-art tracking accuracy while runs at more than 80 frames per second.
机译:最近,用于对象跟踪的脱机训练在平衡跟踪准确性和速度方面显示出了巨大的潜力。然而,仍然难以使离线训练的模型适应在线跟踪的目标。这项工作提出了一个残余注意力连续网络(RASNet),用于高性能对象跟踪。 RASNet模型在暹罗跟踪框架内重新构造了相关过滤器,并引入了各种注意机制来适应模型而无需在线更新模型。尤其是,通过利用离线训练的一般注意力,目标适应的剩余注意力以及渠道偏向的特征注意力,RASNet不仅减轻了深度网络训练中的过拟合问题,而且还由于其增强了判别能力和适应性。表征学习与鉴别学习的分离。所提出的深度架构是从头到尾训练的,并充分利用了丰富的时空信息来实现强大的视觉跟踪。在两个最新基准(OTB-2015和VOT2017)上的实验结果表明,RASNet跟踪器具有最先进的跟踪精度,并且可以每秒80帧以上的速度运行。

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