Speech recognition on DSP: algorithm optimization and performance analysis.

Yuan Meng. === Thesis (M.Phil.)--Chinese University of Hong Kong, 2004. === Includes bibliographical references (leaves 85-91). === Abstracts in English and Chinese. === Chapter 1 --- Introduction --- p.1 === Chapter 1.1 --- History of ASR development --- p.2 === Chapter 1.2 --- Fundamentals of au...

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Bibliographic Details
Other Authors: Yuan, Meng.
Format: Others
Language:English
Chinese
Published: 2004
Subjects:
Online Access:http://library.cuhk.edu.hk/record=b5892165
http://repository.lib.cuhk.edu.hk/en/item/cuhk-324923
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Summary:Yuan Meng. === Thesis (M.Phil.)--Chinese University of Hong Kong, 2004. === Includes bibliographical references (leaves 85-91). === Abstracts in English and Chinese. === Chapter 1 --- Introduction --- p.1 === Chapter 1.1 --- History of ASR development --- p.2 === Chapter 1.2 --- Fundamentals of automatic speech recognition --- p.3 === Chapter 1.2.1 --- Classification of ASR systems --- p.3 === Chapter 1.2.2 --- Automatic speech recognition process --- p.4 === Chapter 1.3 --- Performance measurements of ASR --- p.7 === Chapter 1.3.1 --- Recognition accuracy --- p.7 === Chapter 1.3.2 --- Complexity --- p.7 === Chapter 1.3.3 --- Robustness --- p.8 === Chapter 1.4 --- Motivation and goal of this work --- p.8 === Chapter 1.5 --- Thesis outline --- p.10 === Chapter 2 --- Signal processing techniques for front-end --- p.12 === Chapter 2.1 --- Basic feature extraction principles --- p.13 === Chapter 2.1.1 --- Pre-emphasis --- p.13 === Chapter 2.1.2 --- Frame blocking and windowing --- p.13 === Chapter 2.1.3 --- Discrete Fourier Transform (DFT) computation --- p.15 === Chapter 2.1.4 --- Spectral magnitudes --- p.15 === Chapter 2.1.5 --- Mel-frequency filterbank --- p.16 === Chapter 2.1.6 --- Logarithm of filter energies --- p.18 === Chapter 2.1.7 --- Discrete Cosine Transformation (DCT) --- p.18 === Chapter 2.1.8 --- Cepstral Weighting --- p.19 === Chapter 2.1.9 --- Dynamic featuring --- p.19 === Chapter 2.2 --- Practical issues --- p.20 === Chapter 2.2.1 --- Review of practical problems and solutions in ASR appli- cations --- p.20 === Chapter 2.2.2 --- Model of environment --- p.23 === Chapter 2.2.3 --- End-point detection (EPD) --- p.23 === Chapter 2.2.4 --- Spectral subtraction (SS) --- p.25 === Chapter 3 --- HMM-based Acoustic Modeling --- p.26 === Chapter 3.1 --- HMMs for ASR --- p.26 === Chapter 3.2 --- Output probabilities --- p.27 === Chapter 3.3 --- Viterbi search engine --- p.29 === Chapter 3.4 --- Isolated word recognition (IWR) & Connected word recognition (CWR) --- p.30 === Chapter 3.4.1 --- Isolated word recognition --- p.30 === Chapter 3.4.2 --- Connected word recognition (CWR) --- p.31 === Chapter 4 --- DSP for embedded applications --- p.32 === Chapter 4.1 --- "Classification of embedded systems (DSP, ASIC, FPGA, etc.)" --- p.32 === Chapter 4.2 --- Description of hardware platform --- p.34 === Chapter 4.3 --- I/O operation for real-time processing --- p.36 === Chapter 4.4 --- Fixed point algorithm on DSP --- p.40 === Chapter 5 --- ASR algorithm optimization --- p.42 === Chapter 5.1 --- Methodology --- p.42 === Chapter 5.2 --- Floating-point to fixed-point conversion --- p.43 === Chapter 5.3 --- Computational complexity consideration --- p.45 === Chapter 5.3.1 --- Feature extraction techniques --- p.45 === Chapter 5.3.2 --- Viterbi search module --- p.50 === Chapter 5.4 --- Memory requirements consideration --- p.51 === Chapter 6 --- Experimental results and performance analysis --- p.53 === Chapter 6.1 --- Cantonese isolated word recognition (IWR) --- p.54 === Chapter 6.1.1 --- Execution time --- p.54 === Chapter 6.1.2 --- Memory requirements --- p.57 === Chapter 6.1.3 --- Recognition performance --- p.57 === Chapter 6.2 --- Connected word recognition (CWR) --- p.61 === Chapter 6.2.1 --- Execution time consideration --- p.62 === Chapter 6.2.2 --- Recognition performance --- p.62 === Chapter 6.3 --- Summary & discussion --- p.66 === Chapter 7 --- Implementation of practical techniques --- p.67 === Chapter 7.1 --- End-point detection (EPD) --- p.67 === Chapter 7.2 --- Spectral subtraction (SS) --- p.71 === Chapter 7.3 --- Experimental results --- p.72 === Chapter 7.3.1 --- Isolated word recognition (IWR) --- p.72 === Chapter 7.3.2 --- Connected word recognition (CWR) --- p.75 === Chapter 7.4 --- Results --- p.77 === Chapter 8 --- Conclusions and future work --- p.78 === Chapter 8.1 --- Summary and Conclusions --- p.78 === Chapter 8.2 --- Suggestions for future research --- p.80 === Appendices --- p.82 === Chapter A --- "Interpolation of data entries without floating point, divides or conditional branches" --- p.82 === Chapter B --- Vocabulary for Cantonese isolated word recognition task --- p.84 === Bibliography --- p.85