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SF-Net: Structured Feature Network for Continuous Sign Language Recognition

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arxiv 1908.01341 v1 pith:PCQF4XCX submitted 2019-08-04 cs.CV

SF-Net: Structured Feature Network for Continuous Sign Language Recognition

classification cs.CV
keywords sf-netlevelproposedcontinuousfeaturelanguagesignstructured
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Continuous sign language recognition (SLR) aims to translate a signing sequence into a sentence. It is very challenging as sign language is rich in vocabulary, while many among them contain similar gestures and motions. Moreover, it is weakly supervised as the alignment of signing glosses is not available. In this paper, we propose Structured Feature Network (SF-Net) to address these challenges by effectively learn multiple levels of semantic information in the data. The proposed SF-Net extracts features in a structured manner and gradually encodes information at the frame level, the gloss level and the sentence level into the feature representation. The proposed SF-Net can be trained end-to-end without the help of other models or pre-training. We tested the proposed SF-Net on two large scale public SLR datasets collected from different continuous SLR scenarios. Results show that the proposed SF-Net clearly outperforms previous sequence level supervision based methods in terms of both accuracy and adaptability.

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