TY - CONF SN - 9781538625392 PB - Institute of Electrical and Electronics Engineers Inc. Y1 - 2017/// VL - 2017-D EP - 5 UR - https://www.scopus.com/inward/record.uri?eid=2-s2.0-85048414533&doi=10.1109%2fROMA.2017.8231833&partnerID=40&md5=03a5550ab8878d6884981139935a7142 A1 - Zulkifly, M.A.A. A1 - Yahya, N. AV - none KW - Eigenvalues and eigenfunctions; Extraction; Feature extraction; Manufacture; Robotics; Signal analysis; Singular value decomposition; Speech; Speech communication; Speech recognition KW - Eigen decomposition; Malay words; Oriented energy; Principal vectors; Rasta-plp; STFT KW - Audio signal processing TI - Relative spectral-perceptual linear prediction (RASTA-PLP) speech signals analysis using singular value decomposition (SVD) ID - scholars8038 SP - 1 N1 - cited By 8; Conference of 3rd IEEE International Symposium in Robotics and Manufacturing Automation, ROMA 2017 ; Conference Date: 19 September 2017 Through 21 September 2017; Conference Code:134001 N2 - Speech recognition system has application in many areas such as customer call centers and as a medium in helping those with learning disabilities. There are three main stages in speech recognition which are signal analysis, feature extraction and modeling. Feature extraction plays an important role in speech recognition system and good speech feature extraction technique will allow the systems to accurately identify spoken words. In this work, we present the analysis of speech signals extracted by RASTA-PLP technique using eigenvalue decomposition. Using some Malay words having one, two and three syllables, we analyze the distance of RASTA-PLP speech signals between two same words and two different words. The distance between two words for RASTA-PLP was calculated using distance between principal eigenvectors. Results from this work shows that compared to STFT, RASTA-PLP's main signal features can be represented by smaller number of vectors. This characteristic gives an advantage of lower computational burden for RASTA-PLP. © 2017 IEEE. ER -