Litcius/Paper detail

Environmental effects on reliability and accuracy of MFCC based voice recognition for industrial human-robot-interaction

Benjamin Birch, C E M Griffiths, Adam Milton Morgan

2021Proceedings of the Institution of Mechanical Engineers Part B Journal of Engineering Manufacture36 citationsDOIOpen Access PDF

Abstract

Collaborative robots are becoming increasingly important for advanced manufacturing processes. The purpose of this paper is to determine the capability of a novel Human-Robot-interface to be used for machine hole drilling. Using a developed voice activation system, environmental factors on speech recognition accuracy are considered. The research investigates the accuracy of a Mel Frequency Cepstral Coefficients-based feature extraction algorithm which uses Dynamic Time Warping to compare an utterance to a limited, user-dependent dictionary. The developed Speech Recognition method allows for Human-Robot-Interaction using a novel integration method between the voice recognition and robot. The system can be utilised in many manufacturing environments where robot motions can be coupled to voice inputs rather than using time consuming physical interfaces. However, there are limitations to uptake in industries where the volume of background machine noise is high.

Topics & Concepts

Dynamic time warpingComputer scienceRobotMel-frequency cepstrumSpeech recognitionHuman–robot interactionInterface (matter)UtteranceReliability (semiconductor)Feature (linguistics)Feature extractionHuman–computer interactionArtificial intelligenceMaximum bubble pressure methodPhysicsPower (physics)BubbleParallel computingPhilosophyLinguisticsQuantum mechanicsRobot Manipulation and LearningSpeech Recognition and SynthesisHydraulic and Pneumatic Systems
Environmental effects on reliability and accuracy of MFCC based voice recognition for industrial human-robot-interaction | Litcius