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Matching Seqlets: An Unsupervised Approach for Locality Preserving Sequence Matching

机译:匹配SEQLETS:一种无监督的位置保存序列匹配方法

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摘要

In this paper, we propose a novel unsupervised approach for sequence matching by explicitly accounting for the locality properties in the sequences. In contrast to conventional approaches that rely on frame-to-frame matching, we conduct matching using sequencelet or seqlet, a sub-sequence wherein the frames share strong similarities and are thus grouped together. The optimal seqlets and matching between them are learned jointly, without any supervision from users. The learned seqlets preserve the locality information at the scale of interest and resolve the ambiguities during matching, which are omitted by frame-based matching methods. We show that our proposed approach outperforms the state-of-the-art ones on datasets of different domains including human actions, facial expressions, speech, and character strokes.
机译:在本文中,我们提出了一种通过明确核对序列中的局部性属性来序列匹配的新型无监督方法。与依赖于帧到帧匹配的传统方法相反,我们使用Sequencelet或SEQLet进行匹配,其中帧共享强相似性并且因此将其分组在一起。它们之间的最佳SEQLET和匹配是共同学习的,没有用户的任何监督。学习的SEQLETS以感兴趣的规模保留了地区信息,并在匹配期间解决歧义,这些匹配方法省略了帧匹配方法。我们表明我们的建议方法优于不同领域的数据集的最先进的方法,包括人类行为,面部表情,演讲和人物笔划。

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