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Object tracking by mean shift and radial basis function neural networks

机译:均值漂移和径向基函数神经网络的目标跟踪

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摘要

In this paper, a tracker based on mean shift and radial basis function neural networks called MS-RBF is addressed. As its name implies, two independent trackers have been combined and linked together. The mean shift algorithm estimates the target's location within only two iterations. The scale and orientation of target are computed by exploiting 2-D correlation coefficient between reference and target candidate histograms instead of using Bhattacharyya coefficient. A code optimization strategy, named multiply-add-accumulate (MAC), is proposed to remove useless memory occupation and programmatic operations. MAC implementation has reduced computational load and made overall tracking process faster. The second tracker RBFNN has an input feature vector that contains variables such as local contrast, color histogram, gradient, intensity, and spatial frequency. The neural network learns the color and texture features from the target and background. Then, this information is used to detect and track the object in other frames. The neural network employs Epanechnikov activation functions. The features extracted in any frame are clustered by Fuzzy C-Means clustering which produces the means and variances of the clusters. The experimental results show that the proposed tracker can resist to different types of occlusions, sudden movement, and shape deformations.
机译:本文提出了一种基于均值漂移和径向基函数神经网络的跟踪器,称为MS-RBF。顾名思义,两个独立的跟踪器已经合并并链接在一起。均值漂移算法仅在两次迭代中估算目标的位置。通过利用参考和目标候选直方图之间的二维相关系数而不是使用Bhattacharyya系数来计算目标的比例和方向。提出了一种代码优化策略,称为乘加累加(MAC),以消除无用的内存占用和编程操作。 MAC的实施减少了计算量,并使整体跟踪过程更快。第二个跟踪器RBFNN具有一个输入特征向量,其中包含变量,例如局部对比度,颜色直方图,梯度,强度和空间频率。神经网络从目标和背景中学习颜色和纹理特征。然后,此信息用于检测和跟踪其他帧中的对象。神经网络采用Epanechnikov激活函数。在任意帧中提取的特征通过模糊C均值聚类进行聚类,从而产生聚类的均值和方差。实验结果表明,提出的跟踪器可以抵抗不同类型的遮挡,突然运动和形状变形。

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