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首页> 外文期刊>ACM transactions on multimedia computing communications and applications >Online Early-Late Fusion Based on Adaptive HMM for Sign Language Recognition
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Online Early-Late Fusion Based on Adaptive HMM for Sign Language Recognition

机译:基于自适应HMM的在线早期融合在手语识别中的应用

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摘要

In sign language recognition (SLR) with multimodal data, a signword can be represented by multiply features, for which there exist an intrinsic property and a mutually complementary relationship among them. To fully explore those relationships, we propose an online early-late fusion method based on the adaptive Hidden Markov Model (HMM). In terms of the intrinsic property, we discover that inherent latent change states of each sign are related not only to the number of key gestures and body poses but also to their translation relationships. We propose an adaptive HMM method to obtain the hidden state number of each sign by affinity propagation clustering. For the complementary relationship, we propose an online early-late fusion scheme. The early fusion (feature fusion) is dedicated to preserving useful information to achieve a better complementary score, while the late fusion (score fusion) uncovers the significance of those features and aggregates them in a weighting manner. Different from classical fusion methods, the fusion is query adaptive. For different queries, after feature selection (including the combined feature), the fusion weight is inversely proportional to the area under the curve of the normalized query score list for each selected feature. The whole fusion process is effective and efficient. Experiments verify the effectiveness on the signer-independent SLR with large vocabulary. Compared either on different dataset sizes or to different SLR models, our method demonstrates consistent and promising performance.
机译:在具有多模式数据的手语识别(SLR)中,手语可以由多个特征表示,为此,它们之间具有内在属性和相互补充的关系。为了充分探讨这些关系,我们提出了一种基于自适应隐马尔可夫模型(HMM)的在线早期-后期融合方法。就内在属性而言,我们发现每个符号的内在潜在变化状态不仅与关键手势和身体姿势的数量有关,而且还与它们的翻译关系有关。我们提出了一种自适应HMM方法,以通过亲和力传播聚类获得每个符号的隐藏状态数。对于互补关系,我们提出了在线早期-后期融合方案。早期融合(功能融合)致力于保存有用的信息以获得更好的互补评分,而后期融合(得分融合)则揭示了这些特征的重要性并以加权方式对其进行汇总。与经典融合方法不同,该融合是查询自适​​应的。对于不同的查询,在选择特征(包括组合特征)之后,融合权重与每个选定特征的归一化查询得分列表曲线下的面积成反比。整个融合过程是有效而高效的。实验证明,在词汇量较大的独立于签名者的SLR上,这种方法是有效的。与不同数据集大小或不同SLR模型相比,我们的方法证明了一致且有希望的性能。

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