In recent years, the integration of human-robot interaction with speech
recognition has gained a lot of pace in the manufacturing industries. Conventional
methods to control the robots include semi-autonomous, fully-autonomous,
and wired methods. Operating through a teaching pendant or a joystick is easy
to implement but is not effective when the robot is deployed to perform complex
repetitive tasks. Speech and touch are natural ways of communicating for
humans and speech recognition, being the best option, is a heavily researched
technology. In this study, we aim at developing a stable and robust speech
recognition system to allow humans to communicate with machines (roboticarm) in a seamless manner. This paper investigates the potential of the linear
predictive coding technique to develop a stable and robust HMM-based phoneme
speech recognition system for applications in robotics. Our system is divided
into three segments: a microphone array, a voice module, and a robotic arm
with three degrees of freedom (DOF). To validate our approach, we performed
experiments with simple and complex sentences for various robotic activities
such as manipulating a cube and pick and place tasks. Moreover, we also
analyzed the test results to rectify problems including accuracy and recognition
score.
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