ACCURATE SHORT-TERM ANALYSIS OF THE FUNDAMENTAL FREQUENCY AND THE HARMONICS-TO-NOISE RATIO OF A SAMPLED SOUND
- Authors
- Paul Boersma
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About ACCURATE SHORT-TERM ANALYSIS OF THE FUNDAMENTAL FREQUENCY AND THE HARMONICS-TO-NOISE RATIO OF A SAMPLED SOUND
This paper, published in 1993, received 791 indexed citations . Written by Paul Boersma covering the research area of Statistical and Nonlinear Physics, Artificial Intelligence and Signal Processing. It is primarily cited by scholars working on Signal Processing (359 citations), Experimental and Cognitive Psychology (307 citations) and Artificial Intelligence (306 citations).
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This paper is also available at doi.org/w69038893.