Journal ArticleParallel publicationPublished versionDOI: 10.48548/pubdata-2446

Advanced Neural Classifier-Based Effective Human Assistance Robots Using Comparable Interactive Input Assessment Technique

Chronological data

Date of first publication2024-08-13
Date of publication in PubData 2025-10-23

Language of the resource

English

Related external resources

Variant form of DOI: 10.3390/math12162500
Albekairi, M., Kaaniche, K., Abbas, G., Mercorelli, P., Alanazi, M. D., & Almadhor, A. (2024). Advanced Neural Classifier-Based Effective Human Assistance Robots Using Comparable Interactive Input Assessment Technique. Mathematics, 12(16), Article 2500
Published in ISSN: 2227-7390
Mathematics

Abstract

The role of robotic systems in human assistance is inevitable with the bots that assist with interactive and voice commands. For cooperative and precise assistance, the understandability of these bots needs better input analysis. This article introduces a Comparable Input Assessment Technique (CIAT) to improve the bot system’s understandability. This research introduces a novel approach for HRI that uses optimized algorithms for input detection, analysis, and response generation in conjunction with advanced neural classifiers. This approach employs deep learning models to enhance the accuracy of input identification and processing efficiency, in contrast to previous approaches that often depended on conventional detection techniques and basic analytical methods. Regardless of the input type, this technique defines cooperative control for assistance from previous histories. The inputs are cooperatively validated for the instruction responses for human assistance through defined classifications. For this purpose, a neural classifier is used; the maximum possibilities for assistance using self-detected instructions are recommended for the user. The neural classifier is divided into two categories according to its maximum comparable limits: precise instruction and least assessment inputs. For this purpose, the robot system is trained using previous histories and new assistance activities. The learning process performs comparable validations between detected and unrecognizable inputs with a classification that reduces understandability errors. Therefore, the proposed technique was found to reduce response time by 6.81%, improve input detection by 8.73%, and provide assistance by 12.23% under varying inputs.

Keywords

Neural Network; Machine Learning; Robot System; Interactive Classification; Optimal Control

More information

DDC

629 :: Andere Fachrichtungen der Ingenieurwissenschaften
006 :: Spezielle Computerverfahren

Creation Context

Research