2021
DOI: 10.18178/ijmlc.2021.11.2.1024
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Signer-Independent Sign Language Recognition with Adversarial Neural Networks

Abstract: Sign Language Recognition (SLR) has become an appealing topic in modern societies because such technology can ideally be used to bridge the gap between deaf and hearing people. Although important steps have been made towards the development of real-world SLR systems, signer-independent SLR is still one of the bottleneck problems of this research field. In this regard, we propose a deep neural network along with an adversarial training objective, specifically designed to address the signer-independent problem. … Show more

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