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Mel-frequency cepstrum
Known as:
Mel Frequency Cepstral Coefficients
, MFC
, Mel frequency cepstral coefficient
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In sound processing, the mel-frequency cepstrum (MFC) is a representation of the short-term power spectrum of a sound, based on a linear cosine…
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Related topics
Related topics
13 relations
Acoustic model
Automatic target recognition
Cepstrum
Data compression
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Broader (1)
Signal processing
Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
Highly Cited
2010
Highly Cited
2010
English digits speech recognition system based on Hidden Markov Models
A. M. Abushariah
,
T. Gunawan
,
Othman Omran Khalifa
,
M. Abushariah
International Conference on Computer and…
2010
Corpus ID: 15271427
This paper aims to design and implement English digits speech recognition system using Matlab (GUI). This work was based on the…
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2007
2007
Vector Quantization In Text Dependent Automatic Speaker Recognition Using Mel-frequency Cepstrum Coefficient
A. Kabir
2007
Corpus ID: 17357174
Automatic speaker recognition is a field of study attributed in identifying a person from a spoken phrase. The technique makes it…
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Highly Cited
2005
Highly Cited
2005
The successive mean quantization transform
M. Nilsson
,
M. Dahl
,
I. Claesson
Proceedings. (ICASSP '05). IEEE International…
2005
Corpus ID: 17366504
This paper presents the successive mean quantization transform (SMQT). The transform reveals the organization or structure of the…
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Highly Cited
2003
Highly Cited
2003
Musical instrument recognition using ICA-based transform of features and discriminatively trained HMMs
A. Eronen
Seventh International Symposium on Signal…
2003
Corpus ID: 16724068
In this paper, we describe a system for the recognition of musical instruments from isolated notes or drum samples. We first…
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2002
2002
Boosting Speech/Non-speech Classification Using Averaged Mel-Frequency Cepstrum Coefficients Features
Z. Xiong
,
Thomas S. Huang
IEEE Pacific Rim Conference on Multimedia
2002
Corpus ID: 41300485
AdaBoost is used to boost and select the best sequence of weak classifiers for the speech/non-speech classification. These weak…
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2001
2001
Detecting sound events in basketball video archive
Dongqing Zhang
,
D. Ellis
2001
Corpus ID: 18785975
The report proposes a method for detecting the sound events in a basketball game with focusing on detecting cheering sound. MFCC…
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Highly Cited
1999
Highly Cited
1999
On the relative importance of various components of the modulation spectrum for automatic speech recognition
N. Kanedera
,
T. Arai
,
H. Hermansky
,
M. Pavel
Speech Communication
1999
Corpus ID: 33056789
Highly Cited
1999
Highly Cited
1999
Bandwidth expansion of speech based on vector quantization of the mel frequency cepstral coefficients
N. Enbom
,
W. Kleijn
IEEE Workshop on Speech Coding Proceedings. Model…
1999
Corpus ID: 60816362
Telephone speech is usually limited to less than 4 kHz in bandwidth. This bandwidth limitation results in the typical sound of…
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1999
1999
Development of "MEL HORSE"
H. Takeuchi
Proceedings IEEE International Conference on…
1999
Corpus ID: 9549274
A new legged machine named "MEL HORSE II" is developed. MEL HORSE II is a quadruped robot. Different leg-functions are assigned…
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Highly Cited
1996
Highly Cited
1996
A probabilistic framework for feature-based speech recognition
James R. Glass
,
Jane W. Chang
,
M. McCandless
Proceeding of Fourth International Conference on…
1996
Corpus ID: 1207578
Most current speech recognizers use an observation space which is based on a temporal sequence of "frames" (e.g. Mel-cepstra…
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