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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
2015
Highly Cited
2015
ESC: Dataset for Environmental Sound Classification
Karol J. Piczak
ACM Multimedia
2015
Corpus ID: 17567398
One of the obstacles in research activities concentrating on environmental sound classification is the scarcity of suitable and…
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Highly Cited
2014
Highly Cited
2014
Audio-visual speech recognition using deep learning
K. Noda
,
Yuki Yamaguchi
,
K. Nakadai
,
HIroshi G. Okuno
,
T. Ogata
Applied intelligence (Boston)
2014
Corpus ID: 8094713
Audio-visual speech recognition (AVSR) system is thought to be one of the most promising solutions for reliable speech…
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Highly Cited
2010
Highly Cited
2010
Opensmile: the munich versatile and fast open-source audio feature extractor
F. Eyben
,
M. Wöllmer
,
Björn Schuller
ACM Multimedia
2010
Corpus ID: 8726667
We introduce the openSMILE feature extraction toolkit, which unites feature extraction algorithms from the speech processing and…
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Highly Cited
2010
Highly Cited
2010
Voice Recognition Algorithms using Mel Frequency Cepstral Coefficient (MFCC) and Dynamic Time Warping (DTW) Techniques
Lindasalwa Muda
,
M. Begam
,
I. Elamvazuthi
arXiv.org
2010
Corpus ID: 18758518
Abstract — Digital processing of speech signal and voice recognition algorithm is very important for fast and accurate automatic…
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Review
2006
Review
2006
Emotional speech recognition: Resources, features, and methods
D. Ververidis
,
Constantine Kotropoulos
Speech Communication
2006
Corpus ID: 17343016
Review
2004
Review
2004
A Large-Scale Evaluation of Acoustic and Subjective Music-Similarity Measures
Adam Berenzweig
,
B. Logan
,
D. Ellis
,
B. Whitman
Computer Music Journal
2004
Corpus ID: 2563777
music similarity, acoustic measures, evaluation, ground-truth Subjective similarity between musical pieces and artists is an…
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2003
2003
MODIFIED MEL-FREQUENCY CEPSTRUM COEFFICIENT
Li Tan
,
M. Karnjanadecha
2003
Corpus ID: 17040577
This paper describes the principle of MFCC feature extraction and the knowledge of human auditory masking effect in order to…
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Highly Cited
2001
Highly Cited
2001
Comparison of linear prediction cepstrum coefficients and mel-frequency cepstrum coefficients for language identification
Eddie Wong
,
S. Sridharan
Proceedings of International Symposium on…
2001
Corpus ID: 62726382
The speech parametrization methods: linear prediction cepstrum coefficients and mel-frequency cepstrum coefficients were compared…
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Highly Cited
2000
Highly Cited
2000
Mel Frequency Cepstral Coefficients for Music Modeling
B. Logan
International Society for Music Information…
2000
Corpus ID: 17454278
We examine in some detail Mel Frequency Cepstral Coefficients (MFCCs) the dominant features used for speech recognition and…
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Highly Cited
1992
Highly Cited
1992
Theory of Generalized Annotated Logic Programming and its Applications
M. Kifer
,
V. S. Subrahmanian
The Journal of Logic Programming
1992
Corpus ID: 18331433
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