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Adaptive Appearance Tracking Model Using Subspace Learning Method

机译:基于子空间学习方法的自适应外观跟踪模型

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Visual tracking is still a challenging subject due to the targeted object's change in direction and size, stochastic disturbance under complicated scene. In the work, we proposed a visual tracking framework based on the subspace' updating and learning. We introduced the Hall's subspace updating algorithm and the new measurement on subspace's similarity in computing particles' weights under Condensation algorithm in our tracking processes. Differed from conventional PCA method, our method adaptively updated the subspace which can reflect appearance variation of the moving target over long period of time. Compared with Condensation algorithm using color histogram, the tracker we proposed can effectively track the target under complicated surrounding.
机译:由于目标对象的方向和大小变化,复杂场景下的随机干扰,视觉跟踪仍然是一个具有挑战性的主题。在工作中,我们提出了基于子空间的更新和学习的视觉跟踪框架。在跟踪过程中,我们介绍了霍尔的子空间更新算法以及在凝聚算法下计算粒子权重时子空间相似性的新度量。与传统的PCA方法不同,我们的方法自适应地更新了子空间,该子空间可以长时间反映运动目标的外观变化。与使用颜色直方图的压缩算法相比,我们提出的跟踪器可以有效地跟踪复杂环境下的目标。

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