面向实时手语翻译的集成CNN模型框架

Hao Xian Chung, Nazia Hameed, Jérémie Clos, M. Hasan
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引用次数: 0

摘要

美国手语(ASL)是一种自然语言,旨在为有听力和语言障碍的人减少交流障碍。然而,手语在社会上并不是一种常见的交流形式,缺乏手语翻译来缓解交流。因此,本研究提出了一种改进的基于视觉的交流框架,用于实时翻译美国手语字母。该框架包括图像预处理、U-Net手部分割、数据增强技术和美国手语分类等步骤。提出了以V GG19、R esNet-50和MobileNet为基础模型,以2个全连通层为元模型的集成分类模型。与现有文献相比,该方法的准确率达到了99.86%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Framework of Ensemble CNN Models for Real-Time Sign Language Translation
American sign language (ASL) is a natural language to minimize communication barrier for the people suffering from hearing and speech impairment. However, sign languages are not a common form of communication in society, and it is lacking a sign language translator to ease the communication. Hence, this research proposes an improved visual-based communication framework to translate ASL alphabets in real-time. The proposed framework consists of different steps i.e., image pre-processing, hand segmentation with U-Net, data-augmentation techniques, and classification of American sign language. A n ensemble classification model i s proposed where V GG19, R esNet-50 and MobileNet are used as base models, and 2 fully connected layers are used as meta model. The proposed approach achieved 99.86% accuracy and performed better when compared with existing literature.
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