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Target Tracking Algorithm Based on Adaptive Scale Detection Learning

机译:基于自适应刻度检测学习的目标跟踪算法

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In this paper, to better solve the problem of low tracking accuracy caused by the sudden change of target scale, we design and propose an adaptive scale mutation tracking algorithm using a deep learning network to detect the target first and then track it using the kernel correlation filtering method and verify the effectiveness of the model through experiments. The improvement point of this paper is to change the traditional kernel correlation filtering algorithm to detect and track at the same time and to combine deep learning with traditional kernel correlation filtering tracking to apply in the process of target tracking; the addition of deep learning network not only can learn more accurate feature representation but also can more effectively cope with the low resolution of video sequences, so that the algorithm in the case of scale mutation achieves more accurate target tracking in the case of scale mutation. To verify the effectiveness of this method in the case of scale mutation, four evaluation criteria, namely, average accuracy, cross-ratio accuracy, temporal robustness, and spatial robustness, are combined to demonstrate the effectiveness of the algorithm in the case of scale mutation. The experimental results verify that the joint detection strategy plays a good role in correcting the tracking drift caused by the subsequent abrupt change of the target scale and the effectiveness of the adaptive template update strategy. By adaptively changing the number of interval frames of neural network redetection to improve the tracking performance, the tracking speed is improved after the fusion of correlation filtering and neural network, and the combination of both is promoted for better application in target tracking tasks.
机译:在本文中,以更好地解决因目标规模的突然改变低跟踪精度的问题,我们设计并使用了深刻的学习网络,首先检测目标,然后使用内核相关跟踪它提出了一种自适应规模突变跟踪算法滤波的方法和通过实验验证了模型的有效性。本文的改进点是要改变传统的内核相关滤波算法来检测和跟踪在同一时间和深度学习与传统内核相关滤波跟踪目标跟踪的过程中应用相结合;加深学习网络不仅可以了解更准确的特征表示,但也可以用视频序列的低分辨率更有效地应对,从而使规模突变的情况下,算法规模突变的情况下,实现更精确的目标跟踪。为了验证在规模突变的情况下,这种方法的有效性,四个评价标准,即,平均精确度,交比的精度,时间鲁棒性,和空间鲁棒性,被组合以表明在规模突变的情况下,算法的有效性。实验结果表明,该联合检测策略起到校正起因于目标规模的后续急剧变化和自适应模板更新策略的有效性的跟踪漂移了很好的作用。通过自适应地改变神经网络再检测的时间间隔的帧的数量,以改善跟踪性能,跟踪速度相关滤波和神经网络的融合后提高,两者的结合促进在目标跟踪任务较好的应用。

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