Efficient Kinect Sensor-based Kurdish Sign Language Recognition Using Echo System Network

IF 1.2 Q3 MULTIDISCIPLINARY SCIENCES ARO-THE SCIENTIFIC JOURNAL OF KOYA UNIVERSITY Pub Date : 2021-10-13 DOI:10.14500/ARO.10827
Samia Mirza, Abdulbasit K. Al-Talabani
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引用次数: 3

Abstract

Sign language assists in building communication and bridging gaps in understanding. Automatic sign language recognition (ASLR) is a field that has recently been studied for various sign languages. However, Kurdish sign language (KuSL) is relatively new and therefore researches and designed datasets on it are limited. This paper has proposed a model to translate KuSL into text and has designed a dataset using Kinect V2 sensor. The computation complexity of feature extraction and classification steps, which are serious problems for ASLR, has been investigated in this paper. The paper proposed a feature engineering approach on the skeleton position alone to provide a better representation of the features and avoid the use of all of the image information. In addition, the paper proposed model makes use of recurrent neural networks (RNNs)-based models. Training RNNs is inherently difficult, and consequently, motivates to investigate alternatives. Besides the trainable long short-term memory (LSTM), this study has proposed the untrained low complexity echo system network (ESN) classifier. The accuracy of both LSTM and ESN indicates they can outperform those in state-of-the-art studies. In addition, ESN which has not been proposed thus far for ASLT exhibits comparable accuracy to the LSTM with a significantly lower training time.
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基于Kinect传感器的回声系统网络库尔德手语识别
手语有助于建立沟通,弥合理解上的差距。自动手语识别(ASLR)是近年来针对各种手语进行研究的一个领域。然而,库尔德手语(KuSL)是一种相对较新的语言,因此对它的研究和设计数据集是有限的。本文提出了一个将KuSL翻译成文本的模型,并使用Kinect V2传感器设计了一个数据集。本文研究了ASLR中存在的严重问题——特征提取和分类步骤的计算复杂性。本文提出了一种仅基于骨架位置的特征工程方法,以更好地表示特征,避免使用所有图像信息。此外,本文提出的模型利用了基于递归神经网络的模型。训练RNN本质上是困难的,因此,它会激励人们研究替代方案。除了可训练长短期记忆(LSTM)之外,本研究还提出了未经训练的低复杂度回声系统网络(ESN)分类器。LSTM和ESN的准确性表明它们可以优于最先进的研究。此外,到目前为止还没有提出用于ASLT的ESN表现出与LSTM相当的准确性,并且训练时间显著较低。
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来源期刊
ARO-THE SCIENTIFIC JOURNAL OF KOYA UNIVERSITY
ARO-THE SCIENTIFIC JOURNAL OF KOYA UNIVERSITY MULTIDISCIPLINARY SCIENCES-
自引率
33.30%
发文量
33
审稿时长
16 weeks
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