Sign Language Translation

Harini R, Janani R, K. S, M. S, V. S
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引用次数: 6

Abstract

Sign language is the way of communication for hearing impaired people. There is a challenge for common people to communicate with deaf people which makes this system helpful in assisting them. This project aims at implementing computer vision which can take the sign from the users and convert them into text in real time. The proposed system contains four modules such as: image capturing, preprocessing classification and prediction. By using image processing the segmentation can be done. Sign gestures are captured and processed using OpenCV python library. The captured gesture is resized, converted to grey scale image and the noise is filtered to achieve prediction with high accuracy. The classification and predication are done using convolution neural network.
手语翻译
手语是听障人士的交流方式。对于普通人来说,与聋人交流是一个挑战,这使得这个系统有助于帮助他们。该项目旨在实现计算机视觉,可以从用户那里获取符号并实时将其转换为文本。该系统包括图像采集、预处理、分类和预测四个模块。利用图像处理技术对图像进行分割。使用OpenCV python库捕获和处理手势。将捕获的手势调整大小,转换为灰度图像,并滤除噪声,实现高精度的预测。利用卷积神经网络进行分类和预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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