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Global-Local Enhancement Network for NMF-Aware Sign Language Recognition

机译:NMF感知手语识别的全球本地增强网络

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摘要

Sign language recognition (SLR) is a challenging problem, involving complex manual features (i.e., hand gestures) and fine-grained non-manual features (NMFs) (i.e., facial expression, mouth shapes, etc.). Although manual features are dominant, non-manual features also play an important role in the expression of a sign word. Specifically, many signwords convey different meanings due to non-manual features, even though they share the same hand gestures. This ambiguity introduces great challenges in the recognition of sign words. To tackle the above issue, we propose a simple yet effective architecture called Global-Local Enhancement Network (GLE-Net), including two mutually promoted streams toward different crucial aspects of SLR. Of the two streams, one captures the global contextual relationship, while the other stream captures the discriminative fine-grained cues. Moreover, due to the lack of datasets explicitly focusing on this kind of feature, we introduce the first non-manual-feature-aware isolated Chinese sign language dataset (NMFs-CSL) with a total vocabulary size of 1,067 sign words in daily life. Extensive experiments on NMFs-CSL and SLR500 datasets demonstrate the effectiveness of our method.
机译:手语识别(SLR)是一个具有挑战性的问题,涉及复杂的手动功能(即手势)和细粒度的非手动特征(NMFS)(即,面部表情,口形等)。虽然手动功能占主导地位,但非手动功能也在标志字的表达式中发挥着重要作用。具体而言,许多符号由于非手动特征而传达不同的含义,即使它们共享相同的手势。这种歧义在识别标志词中引入了巨大挑战。为了解决上述问题,我们提出了一种称为全球局部增强网络(GLE-NET)的简单而有效的架构,包括两个相互促进的SLR的不同关键方面的流。在两个流中,一个捕获全局上下文关系,而另一个流捕获识别的细粒度提示。此外,由于缺少数据集明确关注这种特征,我们介绍了第一个非手动功能感知孤立的中文标志语言数据集(NMFS-CSL),总生活中的总词汇量为1,067个标志单词。关于NMFS-CSL和SLR500数据集的广泛实验证明了我们方法的有效性。

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