A Survey on Artificial Intelligence in Chinese Sign Language Recognition

被引:1
作者
Xianwei Jiang
Suresh Chandra Satapathy
Longxiang Yang
Shui-Hua Wang
Yu-Dong Zhang
机构
[1] Nanjing Normal University of Special Education,Joint Accessibility Key Laboratory
[2] China Disabled Persons’ Federation,School of Computer Engineering
[3] KIIT Deemed to University,School of Architecture Building and Civil Engineering
[4] Loughborough University,School of Mathematics and Actuarial Science
[5] University of Leicester,School of Informatics
[6] University of Leicester,Department of Information Systems, Faculty of Computing and Information Technology
[7] King Abdulaziz University,undefined
来源
Arabian Journal for Science and Engineering | 2020年 / 45卷
关键词
Chinese Sign Language; Fingerspelling recognition; Gesture recognition; Machine learning; Deep neural network; Artificial intelligence; Feature extraction; Classification;
D O I
暂无
中图分类号
学科分类号
摘要
Chinese Sign Language (CSL) offers the main means of communication for the hearing impaired in China. Sign Language Recognition (SLR) can shorten the distance between the hearing-impaired and healthy people and help them integrate into the society. Therefore, SLR has become the focus of sign language application research. Over the years, the continuous development of new technologies provides a source and motivation for SLR. This paper aims to cover the most recent approaches in Chinese Sign Language Recognition (CSLR). With a thorough review of superior methods from 2000 to 2019 in CSLR researches, various techniques and algorithms such as scale-invariant feature transform, histogram of oriented gradients, wavelet entropy, Hu moment invariant, Fourier descriptor, gray-level co-occurrence matrix, dynamic time warping, principal component analysis, autoencoder, hidden Markov model (HMM), support vector machine (SVM), random forest, skin color modeling method, k-NN, artificial neural network, convolutional neural network (CNN), and transfer learning are discussed in detail, which are based on several major stages, that is, data acquisition, preprocessing, feature extraction, and classification. CSLR was summarized from some aspect as follows: methods of classification and feature extraction, accuracy/performance evaluation, and sample size/datasets. The advantages and limitations of different CSLR approaches were compared. It was found that data acquisition is mainly through Kinect and camera, and the feature extraction focuses on hand’s shape and spatiotemporal factors, but ignoring facial expressions. HMM and SVM are used most in the classification. CNN is becoming more and more popular, and a deep neural network-based recognition approach will be the future trend. However, due to the complexity of the contemporary Chinese language, CSLR generally has a lower accuracy than other SLR. It is necessary to establish an appropriate dataset to conduct comparable experiments. The issue of decreasing accuracy as the dataset increases needs to resolve. Overall, our study is hoped to give a comprehensive presentation for those people who are interested in CSLR and SLR and to further contribute to the future research.
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页码:9859 / 9894
页数:35
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