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Patch-Based Tracking and Detecting for Visual Tracking

机译:基于补丁的跟踪和检测视觉跟踪

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As one of the most traditional tracking methods, particle filter has been improved in many previous tracking methods due to its non-Gaussian and non-linear distribution. Meanwhile, pure tracking methods cannot achieve good performance in complex tracking scenarios where there enormous deformation and occlusion occur. We present a combination of patch-based tracking and detecting methodology for visual tracking. In our tracking stage, a hierarchical patch-based histogram is used to describe the observation model, computed by an improved L_1 bin-ratio dissimilarity(L_1 -BRD) distance. While in the detecting stage, a patch-based binary feature is obtained through centersymmetric local binary pattern (CS-LBP) and then used to train a randomize fern forest. We combine the two parts collaboratively and experiments demonstrate that the proposed tracking framework outperforms the state-of-theart methods in challenging scenarios.
机译:作为最传统的跟踪方法之一,由于其非高斯和非线性分布,在许多先前的跟踪方法中已经改进了粒子过滤器。同时,纯粹的跟踪方法无法在复杂的跟踪方案中实现良好的性能,其中发生巨大变形和闭塞。我们介绍了基于补丁的跟踪和检测方法的组合,用于视觉跟踪。在我们的跟踪阶段,使用基于分层补丁的直方图来描述通过改进的L_1 bin比率异化(L_1-BRD)距离计算的观察模型。虽然在检测阶段,通过CenterSymmetric局部二进制模式(CS-LBP)获得基于补丁的二进制特征,然后用于训练随机化蕨类植物林。我们结合了两个部分协作,实验表明,所提出的跟踪框架在具有挑战性的情况下占据了最终的方法。

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