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Fast Generative Approach Based on Sparse Representation for Visual Tracking

机译:基于稀疏表示的视觉跟踪快速生成方法

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摘要

One of issue in generative approach for visual tracking is relates to computation time. It is because generative approach uses particle filter for modeling the motion and as a method to predict the state in the current frame. The system will be more accurate but slower computation if many particles are used. Recently, the combination between particle filter and sparse model is proposed to handle appearance variations and occlusion in visual tracking. Unfortunately, the issue about computation time still remains. This paper presents fast method for sparse generative approach in visual tracking. In this method, l1 minimization is used to calculate sparse coefficient vector for each candidate sample. Then, the maximum weighted is selected to represent the result. Based on simulations, our proposed method demonstrate good result in area under curve parameter and achieve four times faster than other methods with only use fifty particles.
机译:用于视觉跟踪的生成方法中的问题之一与计算时间有关。这是因为生成方法使用粒子滤波器对运动进行建模,并将其作为预测当前帧中状态的方法。如果使用许多粒子,该系统将更加准确,但计算速度会变慢。最近,提出了将粒子过滤器和稀疏模型之间的组合以处理视觉跟踪中的外观变化和遮挡。不幸的是,关于计算时间的问题仍然存在。本文提出了一种用于视觉跟踪的稀疏生成方法的快速方法。在这种方法中,使用l1最小化来计算每个候选样本的稀疏系数向量。然后,选择最大加权来表示结果。基于仿真,我们提出的方法在曲线参数下的面积显示出了良好的结果,并且比仅使用五十个粒子的其他方法快四倍。

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