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首页> 外文期刊>Neural computing & applications >Convolution operators for visual tracking based on spatial-temporal regularization
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Convolution operators for visual tracking based on spatial-temporal regularization

机译:基于空间时间正则化的可视跟踪卷积运算符

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摘要

In recent years, the method based on discriminative correlation filter has been shown excellent performance in short-term visual tracking. However, discriminative correlation filter-based method heavily suffers from the problem of the multiple peaks and model drift in responds maps incurred by occlusion and rotation. To solve the above problem, we proposed convolution operators for visual tracking based on spatial-temporal regularization. Firstly, we add spatial-temporal regularization in loss function, which will guarantee continuity of the model in time. And we use preconditioned conjugate gradient algorithm to obtain filter coefficients. Secondly, we proposed channel reliability to estimate quality of the learned filter and fuse the different reliability coefficients to weight response map in location. We set a threshold to reduce the number of iteration in location and accelerate the compute speed of algorithm. Finally, we use two different correlation filters to estimate location and scale of target, respectively. Extensively experiment in five video sequences show that our tracker has been significantly improved performance in case of occlusion and rotation. The AUC in success plot improves 33.2% than ECO-HC and 41.5% than STRCF, respectively.
机译:近年来,基于辨别相关滤波器的方法已经在短期视觉跟踪中显示出优异的性能。然而,基于识别的相关滤波器的方法严重遭受多峰值和模型漂移的响应和旋转产生的响应图的问题。为了解决上述问题,我们提出了基于空间时间正则化的视觉跟踪的卷积运算符。首先,我们在丢失函数中添加空间时间正则化,这将保证模型的连续性及时。我们使用预先处理的共轭梯度算法来获得滤波器系数。其次,我们提出了频道可靠性,以估计学习过滤器的质量,并将不同的可靠性系数熔化到位置的权重响应图。我们设置了一个阈值以减少位置的迭代次数并加速算法的计算速度。最后,我们使用两个不同的相关滤波器分别估计目标的位置和比例。在五个视频序列中的广泛实验表明,在闭塞和旋转的情况下,我们的跟踪器在显着提高了性能。成功图中的AUC分别提高了33.2%而不是ECO-HC和41.5%的STRCF。

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