深度学习环境下基于KNN的改进手语翻译方法

Neeraj Kumar Pandey, Aakanchha Dwivedi, Mukul Sharma, Arpit Bansal, A. Mishra
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引用次数: 0

摘要

聋哑人社区的主要交流方式是手语。它是聋哑人与他人交流的唯一渠道。本文的目标是发明一种将符号翻译成文本格式的模型。在机器学习算法的帮助下,我们将扫描这些符号,然后将它们转换为可理解的文本。将使用KNN (k-最近邻)算法来做到这一点。用户将得到一个界面,它可以根据他们对它的符号和意义来训练系统,以后可以用于聋哑人和普通人之间的互动,反之亦然。对该模型进行了评估,3名学生使用不同的训练实例。所获得的准确度约为97%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Sign Language Translation approach using KNN in Deep Learning Environment
The deaf and dumb community’s primary mode of communication is signs. It is the only source through which deaf and dumb people can communicate with others. The goal of this paper is to invent a model for translating signs into text format. With assistance of machine learning algorithms, we will scan the signs and then convert them to understandable text. KNN (k-nearest neighbour) algorithm will be used to do so. User will get an interface where it can train the system according to their signs and meanings with respect to it, which can later be used for interaction between deaf and dumb people and common people and vice versa. The assessment of this model is conducted with 3 students using various training examples. The accuracy obtained is approximately 97%.
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