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Learning Spatial-Aware Regressions for Visual Tracking

机译:学习用于视觉跟踪的空间感知回归

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In this paper, we analyze the spatial information of deep features, and propose two complementary regressions for robust visual tracking. First, we propose a kernelized ridge regression model wherein the kernel value is defined as the weighted sum of similarity scores of all pairs of patches between two samples. We show that this model can be formulated as a neural network and thus can be efficiently solved. Second, we propose a fully convolutional neural network with spatially regularized kernels, through which the filter kernel corresponding to each output channel is forced to focus on a specific region of the target. Distance transform pooling is further exploited to determine the effectiveness of each output channel of the convolution layer. The outputs from the kernelized ridge regression model and the fully convolutional neural network are combined to obtain the ultimate response. Experimental results on two benchmark datasets validate the effectiveness of the proposed method.
机译:在本文中,我们分析了深层特征的空间信息,并提出了两个互补的回归方法来进行可靠的视觉跟踪。首先,我们提出一个核化岭回归模型,其中核值定义为两个样本之间所有补丁对的相似性分数的加权和。我们证明了该模型可以表述为神经网络,因此可以有效地求解。其次,我们提出了一种具有空间正则化内核的全卷积神经网络,通过该网络,与每个输出通道相对应的过滤器内核被迫专注于目标的特定区域。进一步利用距离变换池来确定卷积层每个输出通道的有效性。来自核化岭回归模型和完全卷积神经网络的输出被组合以获得最终响应。在两个基准数据集上的实验结果验证了该方法的有效性。

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