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Fully Convolutional Networks for Continuous Sign Language Recognition

About

Continuous sign language recognition (SLR) is a challenging task that requires learning on both spatial and temporal dimensions of signing frame sequences. Most recent work accomplishes this by using CNN and RNN hybrid networks. However, training these networks is generally non-trivial, and most of them fail in learning unseen sequence patterns, causing an unsatisfactory performance for online recognition. In this paper, we propose a fully convolutional network (FCN) for online SLR to concurrently learn spatial and temporal features from weakly annotated video sequences with only sentence-level annotations given. A gloss feature enhancement (GFE) module is introduced in the proposed network to enforce better sequence alignment learning. The proposed network is end-to-end trainable without any pre-training. We conduct experiments on two large scale SLR datasets. Experiments show that our method for continuous SLR is effective and performs well in online recognition.

Ka Leong Cheng, Zhaoyang Yang, Qifeng Chen, Yu-Wing Tai• 2020

Related benchmarks

TaskDatasetResultRank
Continuous Sign Language RecognitionPHOENIX 2014 (dev)
Word Error Rate23.3
188
Continuous Sign Language RecognitionPHOENIX-2014 (test)
WER23.9
185
Continuous Sign Language RecognitionCSL-Daily (dev)
Word Error Rate (WER)33.2
98
Continuous Sign Language RecognitionCSL-Daily (test)
WER32.5
91
Continuous Sign Language RecognitionPHOENIX14-T (dev)
WER23.3
75
Continuous Sign Language RecognitionPHOENIX-2014T (test)
WER25.1
43
Sign Language RecognitionPHOENIX-2014T (test)
WER0.251
41
Continuous Sign Language RecognitionPhoenix14 (test)
WER23.9
39
Sign Language RecognitionPHOENIX 2014 (dev)
WER23.3
32
Continuous Sign Language RecognitionPhoenix14 (dev)
WER23.7
29
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