基于深度学习的美国手语识别

Aeshita Mathur, Deepanshu Singh, R. Chhikara
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引用次数: 1

摘要

聋哑人群体一直面临着沟通障碍,但深度学习领域的进步正在减少这一障碍。作为一种交流方式,手语是最古老、最自然的语言之一,但由于使用手语的人很少,翻译人员也极为稀少,本文提出了基于美国手语的神经网络处理手指拼写的方法。通过实现多种深度学习模型,对手语识别(SLR)进行比较研究。本文提出了一种CNN架构,该架构优于各种单反预训练模型(约4%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition of American Sign Language using Deep Learning
Deaf and mute communities have always faced a communication barrier, but advances in the field of Deep Learning are reducing this barrier. As a form of communication, sign language is one of the most ancient and natural, but since few people speak it and interpreters are extremely rare, this paper proposes to use neural networks to handle fingerspelling based on American Sign Language. A comparative study for Sign Language Recognition (SLR) is presented by implementing a variety of Deep Learning models. The paper proposes a CNN architecture that outperforms (by around 4%) various pretrained models for SLR.
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