Human-robot
interaction (HRI) is a significant area of interest in robotics which has
attracted a wide variety of studies in recent years. In order to provide
natural human-robot interaction, robots will have to acquire the skills to
detect and to integrate meaningfully information from multiple modalities. In
this paper, a practical speech-controlled mobile robot car system is presented
and discussed. In this study the developed Hidden Markov Model (HMM) with
separate word recognition system and real-time control were obtained on a
mobile robot. Mel-Frequency Cepstral Coefficients (MFCC) were applied as
features for the control design of mobile robot. In the study, 270 speech commands
(İLERİ=forward, GERİ=backward, DUR=stop, SAĞA=right, SOLA=left) which are
collected from 54 different people were applied to a series of mathematical
operations and 12 cepstral coefficients were derived. Therefore, a database was
generated by 12 cepstral coefficients. Thus, HMM model was trained and tested
according to database. Speech data were classified in two groups as 90%
training data and 10% test data. The recognition success rate of test commands
was measured 94%.
Subjects | Engineering |
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Journal Section | Articles |
Authors | |
Publication Date | December 31, 2017 |
Published in Issue | Year 2017 Volume: 18 Issue: 5 |