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Robust visual tracking via an online multiple instance learning algorithm based on SIFT features

机译:通过基于SIFT功能的在线多实例学习算法进行可靠的视觉跟踪

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This paper presented a SIFT based multiple instance learning algorithm to deal with the problem of pose variation in the tracking process. The MIL algorithm learns weak classifiers by using instances in the positive and negative bags. Then, a strong classifier is generated by powerful weak classifiers which are selected by maximizing the inner product between the classifier and the maximum likelihood probability of instances. The method avoid computing bag probability and instance probability M times, which reduces computational time. In the traditional MIL, Haar-like features are used to represent instances, which often suffers from computational load. To deal with the problem, Harris operator is introduced to determine the outstanding SIFT features for representing an instance. Combining the Harris operator and SIFT features, the number of the extracted features are seriously deduced. Finally, the proposed algorithm is evaluated on several classical videos. The experiment results show that the method performs better than the traditional MIL algorithm and weighted MIL algorithm (WMIL).
机译:提出了一种基于SIFT的多实例学习算法来解决跟踪过程中姿态变化的问题。 MIL算法通过使用正负包中的实例来学习弱分类器。然后,由强大的弱分类器生成一个强分类器,通过最大程度地选择分类器与实例的最大似然概率之间的内积来选择它们。该方法避免了计算袋概率和实例概率M次,从而减少了计算时间。在传统的MIL中,使用类似Haar的特征来表示实例,这些实例通常会承受计算量。为了解决该问题,引入了Harris运算符以确定代表实例的出色SIFT功能。结合哈里斯算子和SIFT特征,可以对提取的特征数量进行认真推导。最后,在几种经典视频上对提出的算法进行了评估。实验结果表明,该方法的性能优于传统的MIL算法和加权MIL算法。

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