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A Voting-Based Sequential Pattern Recognition Method

机译:基于投票的顺序模式识别方法

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摘要

We propose a novel method for recognizing sequential patterns such as motion trajectory of biological objects (i.e., cells, organelle, protein molecules, etc.), human behavior motion, and meteorological data. In the proposed method, a local classifier is prepared for every point (or timing or frame) and then the whole pattern is recognized by majority voting of the recognition results of the local classifiers. The voting strategy has a strong benefit that even if an input pattern has a very large deviation from a prototype locally at several points, they do not severely influence the recognition resu they are treated just as several incorrect votes and thus will be neglected successfully through the majority voting. For regularizing the recognition result, we introduce partial-dependency to local classifiers. An important point is that this dependency is introduced to not only local classifiers at neighboring point pairs but also to those at distant point pairs. Although, the dependency makes the problem non-Markovian (i.e., higher-order Markovian), it can still be solved efficiently by using a graph cut algorithm with polynomial-order computations. The experimental results revealed that the proposed method can achieve better recognition accuracy while utilizing the above characteristics of the proposed method.
机译:我们提出了一种新颖的方法来识别顺序模式,例如生物对象(即细胞,细胞器,蛋白质分子等)的运动轨迹,人类行为运动和气象数据。在提出的方法中,为每个点(或时间或帧)准备一个局部分类器,然后通过对局部分类器的识别结果进行多数表决来识别整个模式。投票策略具有强大的优势,即使输入模式在几个点上与原型在局部上有很大的偏差,它们也不会严重影响识别结果。它们将被视为几次不正确的投票,因此将通过多数投票而被成功忽略。为了规范化识别结果,我们向局部分类器引入了部分依赖。重要的一点是,这种依赖性不仅引入到相邻点对的局部分类器,而且还引入到遥远点对的局部分类器。尽管依存关系使问题成为非马尔可夫问题(即高阶马尔可夫问题),但仍可以通过使用具有多项式计算的图割算法来有效地解决问题。实验结果表明,该方法在利用上述方法的上述特征的同时,可以获得更好的识别精度。

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