Cognitive Classifier of Hand Gesture Images for Automated Sign Language Recognition: Soft Robot Assistance Based on Neutrosophic Markov Chain Paradigm

Author:

Al-Saidi Muslem12ORCID,Ballagi Áron2,Hassen Oday Ali3,Saad Saad M.45ORCID

Affiliation:

1. Doctoral School of Multidisciplinary Engineering Sciences, Széchenyi István University, Egyetem tér 1, 9026 Győr, Hungary

2. Department of Automation, Széchenyi István University, Egyetem tér 1, 9026 Győr, Hungary

3. Ministry of Education, Wasit Education Directorate, Kut 52001, Iraq

4. Department of Information Technology, Institute of Graduate Studies and Research, Alexandria University, Alexandria 21526, Egypt

5. Department of Artificial Intelligence, Faculty of Computer Sciences and Artificial Intelligence, Pharos University in Alexandria, Canal El Mahmoudia Street, Beside Green Plaza, Alexandria 21648, Egypt

Abstract

In recent years, Sign Language Recognition (SLR) has become an additional topic of discussion in the human–computer interface (HCI) field. The most significant difficulty confronting SLR recognition is finding algorithms that will scale effectively with a growing vocabulary size and a limited supply of training data for signer-independent applications. Due to its sensitivity to shape information, automated SLR based on hidden Markov models (HMMs) cannot characterize the confusing distributions of the observations in gesture features with sufficiently precise parameters. In order to simulate uncertainty in hypothesis spaces, many scholars provide an extension of the HMMs, utilizing higher-order fuzzy sets to generate interval-type-2 fuzzy HMMs. This expansion is helpful because it brings the uncertainty and fuzziness of conventional HMM mapping under control. The neutrosophic sets are used in this work to deal with indeterminacy in a practical SLR setting. Existing interval-type-2 fuzzy HMMs cannot consider uncertain information that includes indeterminacy. However, the neutrosophic hidden Markov model successfully identifies the best route between states when there is vagueness. This expansion is helpful because it brings the uncertainty and fuzziness of conventional HMM mapping under control. The neutrosophic three membership functions (truth, indeterminate, and falsity grades) provide more layers of autonomy for assessing HMM’s uncertainty. This approach could be helpful for an extensive vocabulary and hence seeks to solve the scalability issue. In addition, it may function independently of the signer, without needing data gloves or any other input devices. The experimental results demonstrate that the neutrosophic HMM is nearly as computationally difficult as the fuzzy HMM but has a similar performance and is more robust to gesture variations.

Publisher

MDPI AG

Reference74 articles.

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