基于深度卷积神经网络的手语识别系统

Ismail Hakki Yemenoglu, A. Shah, H. Ilhan
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引用次数: 4

摘要

聋人严重依赖手语。他们利用它们与他人交流。虽然聋哑人熟悉手语,但它并没有被广大公众广泛理解。本文针对不熟悉手语的人,开发了卷积神经网络(CNN)手语识别系统。在这部作品中使用了美国手语字母。我们试图为不懂手语的人创造一个翻译这些信件的工具,我们使用GoogleNet,一个CNN,使用迁移学习方法。我们的数据集被用来训练网络。网络训练完成后,记录测试数据集的网络模型和网络权值。该手语识别系统的准确率为91.02%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Convolutional Neural Networks-Based Sign Language Recognition System
Deaf individuals rely heavily on sign languages. They make use of them to communicate with others. Although deaf individuals are familiar with sign language, but it is not widely understood by the general public. In this article, sign language recognition through convolutional neural network (CNN) system is developed for those who aren't familiar with sign language. American sign language letters are utilized in this work. We tried to create a translator for these letters for people who do not know sign language, and we used GoogleNet, a CNN, using the transfer learning method. Our dataset was used to train the network. The network model and network weights are recorded for the test data set once network training is finished. The accuracy of this sign language recognition system is 91.02%.
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