使用深度学习的美国手语识别

Anusha Puchakayala, Srivarshini Nalla, Pranathi K
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引用次数: 0

摘要

沟通在日常生活中扮演着至关重要的角色,但考虑一下这样一个场景:两个人无法相互沟通,因为其中一个不理解另一个人想说什么。大多数聋哑人在与普通人交谈时都会遇到这种情况。由于手语是残障人士使用的,正常人不知道或缺乏理解。必须弥合这一沟通鸿沟。因此,开发了一种模式来帮助正常人,使聋哑人能够相互交流。其中一个模型是手语检测系统,它使用深度学习策略来识别美国手语(ASL)手势,并以文本格式输出相应的字母表。建立了CNN模型和YOLOv5模型,并进行了对比。YOLO模型的准确率为84.96%,而CNN模型的准确率为80.59%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
American Sign language Recognition using Deep Learning
Communication plays a vital role in day-to-day life but consider a scenario in which two people are unable to communicate with one another because one of them does not comprehend what the other person is attempting to say. Most of the deaf-mute community encounter this when conversing with ordinary folks. As sign language is used by persons with impairments, normal people don'tknow or lacks understanding of it. This communication gap must be bridged. Therefore, a model has been developed to assist normal people and enable deaf-mute individuals to communicate with one another. One such model is the sign language detection system, which uses a deep learning strategy to identify American Sign Language (ASL) gestures and output the corresponding alphabet in text format. A CNN model and YOLOv5 model were built and compared against each other. YOLO model has produced an accuracy of 84.96%, whereas CNN model has produced an accuracy of 80.59%
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