A computer vision-based system for recognition and classification of Urdu sign language dataset

被引:0
作者
Zahid H. [1 ,5 ]
Rashid M. [2 ]
Syed S.A. [3 ]
Ullah R. [4 ]
Asif M. [5 ]
Khan M. [3 ]
Mujeeb A.A. [6 ]
Khan A.H. [6 ]
机构
[1] Biomedical Engineering Department and Electrical Engineering Department, Ziauddin University, Karachi
[2] Electrical Engineering Department and Software Engineering Department, Ziauddin University, Karachi
[3] Biomedical Engineering Department, Sir Syed University of Engineering and Technology, Karachi
[4] Optimizia, Karachi
[5] Electrical Engineering Department, Ziauddin University, Karachi
[6] Biomedical Engineering Department, Ziauddin University, Karachi
关键词
Bag of words; KNN; Pattern recognition; Random Forest; Sign language; SVM; Urdu sign language;
D O I
10.7717/PEERJ-CS.1174
中图分类号
学科分类号
摘要
Human beings rely heavily on social communication as one of the major aspects of communication. Language is the most effective means of verbal and nonverbal communication and association. To bridge the communication gap between deaf people communities, and non-deaf people, sign language is widely used. According to the World Federation of the Deaf, there are about 70 million deaf people present around the globe and about 300 sign languages being used. Hence, the structural form of the hand gestures involving visual motions and signs is used as a communication system to help the deaf and speech-impaired community for daily interaction. The aim is to collect a dataset of Urdu sign language (USL) and test it through a machine learning classifier. The overview of the proposed system is divided into four main stages i.e., data collection, data acquisition, training model ad testing model. The USL dataset which is comprised of 1,560 images was created by photographing various hand positions using a camera. This work provides a strategy for automated identification of USL numbers based on a bag-of-words (BoW) paradigm. For classification purposes, support vector machine (SVM), Random Forest, and K-nearest neighbor (K-NN) are used with the BoWhistogram bin frequencies as characteristics. The proposed technique outperforms others in number classification, attaining the accuracies of 88%, 90%, and 84% for the random forest, SVM, and K-NN respectively. © 2022 Zahid et al.
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共 43 条
[21]  
Kanwal K, Abdullah S, Ahmed YB, Saher Y, Jafri AR., Assistive glove for Pakistani sign language translation, 17th IEEE international multi topic conference 2014, (2014)
[22]  
Katoch S, Singh V, Tiwary US., Indian Sign Language recognition system using SURF with SVM and CNN, Array, 14, (2022)
[23]  
Khan MU, Amjad F, Aziz S, Naqvi ZH, Shakeel M, Imtiaz MA., Surface electromyography based Pakistani sign language interpreter, 2020 international conference on electrical, communication, and computer engineering (ICECCE), (2020)
[24]  
Khan MY, Qayoom A, Nizami MS, Siddiqui MS, Wasi S, Raazi SMK-U-R., Automated prediction of Good Dictionary EXamples (GDEX): a comprehensive experiment with distant supervision, machine learning, and word embedding-based deep learning techniques, Complexity, 2021, (2021)
[25]  
Khan NS, Abid A, Abid K., A novel natural language processing (NLP)based machine translation model for English to Pakistan sign language translation, Cognitive Computation, 12, 4, (2020)
[26]  
Khattak A, Asghar MZ, Saeed A, Hameed IA, Asif Hassan S, Ahmad S., A survey on sentiment analysis in Urdu: a resource-poor language, Egyptian Informatics Journal, 22, 1, (2021)
[27]  
LeCun Y, Boser B, Denker JS, Henderson D, Howard RE, Hubbard W, Jackel LD., Backpropagation applied to handwritten zip code recognition, Neural Computation, 1, 4, (1989)
[28]  
Lee CKM, Ng KKH, Chen C-H, Lau HCW, Chung SY, Tsoi T., American sign language recognition and training method with recurrent neural network, Expert Systems with Applications, 167, (2021)
[29]  
Mali D, Limkar N, Mali S., Indian sign language recognition using SVM classifier, SSRN Electronic Journal, 26, (2019)
[30]  
McCulloch WS, Pitts W., A logical calculus of the ideas immanent in nervous activity, Bulletin of Mathematical Biophysics, 5, 4, (1943)