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Toward Language-independent Lip Reading: A Transfer Learning Approach

机译:朝着语言无关的唇读:转移学习方法

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Automated lip-reading, i.e., translating lip movements into text, has received growing interest in recent years with the success of deep learning across a wide variety of tasks. One major obstacle to progress in this field has been the lack of suitable training resources, with the vast majority being limited to a selective set of languages. In this paper, we study the effectiveness of transfer learning to address the lack of massive amounts of labeled data for building a language-independent lip-reading system. Towards this target, we exploit existing knowledge and generalize to new languages via deep neural networks. Experimental validation is carried out on several publicly available data, i.e., LRW for English, LRRo for Romanian, and LRW-1000 for Mandarin showing promising results with significant performance improvements of the multilingual models in contrast to the monolingual ones.
机译:自动化唇读,即将唇部移动转化为文本,在近年来随着各种任务的深度学习成功而获得了近年来的兴趣。 在这一领域进步的一个主要障碍是缺乏合适的培训资源,绝大多数仅限于选择性的语言。 在本文中,我们研究了转移学习的有效性,解决了缺乏大量标记的标记数据,用于建立独立的语言唇读系统。 对此目标,我们通过深度神经网络利用现有的知识并概括新语言。 实验验证是关于若干公开的数据,即LRW的英语,罗马尼亚LRO,以及用于普通话的LRW-1000,显示有前途的结果,与单语法的多语言模型的显着性能改善。

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