首页> 外文会议>2008 International Conference on Machine Learning and Cybernetics(2008机器学习与控制论国际会议)论文集 >AN IMPROVED MEAN SHIFT TRACKING METHOD BASED ON NONPARAMETRIC CLUSTERING AND ADAPTIVE BANDWIDTH
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AN IMPROVED MEAN SHIFT TRACKING METHOD BASED ON NONPARAMETRIC CLUSTERING AND ADAPTIVE BANDWIDTH

机译:基于非参数聚类和自适应带宽的均值漂移跟踪方法

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An improved mean shift method for object tracking based on nonparametric clustering and adaptive bandwidth is presented in this paper. Based on partitioning the color space of a tracked object by using a modified nonparametric clustering, an appearance model of the tracked object is built. It captures both the color information and spatial layout of the tracked object. The similarity measure between the target model and the target candidate is derived from the Bhattacharyya coefficient The kernel bandwidth parameters are automatically selected by maximizing the lower bound of a log-likelihood function, which is derived from a kernel density estimate using the bandwidth matrix and the modified weight function. The experimental results show that the method can converge in an average of 2.6 iterations per frame.
机译:提出了一种基于非参数聚类和自适应带宽的改进的均值漂移目标跟踪方法。在使用修改后的非参数聚类对跟踪对象的色彩空间进行划分的基础上,构建了跟踪对象的外观模型。它捕获了跟踪对象的颜色信息和空间布局。目标模型与目标候选者之间的相似性度量是从Bhattacharyya系数中得出的。通过最大化对数似然函数的下限来自动选择内核带宽参数,该对数似然函数的下限是使用带宽矩阵和修改权重函数。实验结果表明,该方法平均每帧可以收敛2.6次迭代。

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