2022
DOI: 10.21203/rs.3.rs-1842870/v1
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TwinNet: A Symmetrically Structured Convolutional Architecture for Identifying Tibetan Characters

Abstract: Although the Tibetan language is widely used, its intelligent application is seriously lagging behind. Most studies on character recognition have almost ignored minority languages like Tibetan. For the purpose of recognizing Tibetan characters, a convolutional architecture named TwinNet is proposed in this work. Specifically, two parallel convolutional sub-networks sharing the same parameters were firstly carefully designed and connected using an energy function, thus achieving Tibetan character recognition vi… Show more

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