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Automatic Isolated-Word Arabic Sign Language Recognition System Based on Time Delay Neural Networks

机译:基于时延神经网络的自动隔离词阿拉伯手语识别系统

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摘要

There have been a little number of attempts to develop an Arabic sign recognition system that can be used as a communication means between hearing-impaired and other people. This study introduces the first automatic isolated-word Arabic Sign Language (ArSL) recognition system based on Time Delay Neural Networks (TDNN). The proposed vision-based recognition system that the user wears two simple but different colors gloves when performing the signs in the data sets within this study. The two colored regions are recognized and highlighted within each frame in the video to help in recognizing the signs. This research uses the multivariate Gaussian Mixture Model (GMM) based on the characteristics of the well known Hue Saturation Lightness Model (HIS) in determining the colors within the video frames. In this research the mean and covariance of the three colored region within the frames are determined and used to help us in segmenting each frame (picture) into two colored regions and outlier region. Finally we propose, create and use the following four features as an input to the TDNN; the centroid position for each hand using the center of the upper area for each frame as references, the change in horizontal velocity of both hands across the frames, the change in vertical velocity of both hands across the frames and the area change for each hand across the frames. A large set of samples has been used to recognize 40 isolated words coded by 10 different signers from the Standard Arabic sign language signs. Our proposed system obtains a word recognition rate of 70.0% in testing set.
机译:很少有人尝试开发一种阿拉伯语符号识别系统,该系统可用作听障人士与其他人之间的交流手段。本研究介绍了第一个基于时延神经网络(TDNN)的自动隔离词阿拉伯手语(ArSL)识别系统。拟议的基于视觉的识别系统,用户在本研究中的数据集中执行标志时,戴两个简单但颜色不同的手套。在视频的每个帧中识别并突出显示两个彩色区域,以帮助识别符号。这项研究基于众所周知的色相饱和度亮度模型(HIS)的特征,使用了多元高斯混合模型(GMM)确定视频帧中的颜色。在这项研究中,确定了帧内三个彩色区域的均值和协方差,并用于帮助我们将每个帧(图片)分割为两个彩色区域和离群区域。最后,我们提出,创建并使用以下四个功能作为TDNN的输入;以每帧上方区域的中心为参考的每只手的质心位置,两只手跨过各帧的水平速度的变化,两只手跨过各帧的垂直速度的变化以及每只手跨过的面积的变化框架。大量样本已被用来识别10个不同的签名者从标准阿拉伯手语符号中编码的40个独立单词。我们提出的系统在测试集中获得了70.0%的单词识别率。

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