Litcius/Paper detail

Phoneme Boundary Detection Using Learnable Segmental Features

Felix Kreuk, Yaniv Sheena, Joseph Keshet, Yossi Adi

202024 citationsDOI

Abstract

Phoneme boundary detection plays an essential first step for a variety of speech processing applications such as speaker diarization, speech science, keyword spotting, etc. In this work, we propose a neural architecture coupled with a parameterized structured loss function to learn segmental representations for the task of phoneme boundary detection. First, we evaluated our model when the spoken phonemes were not given as input. Results on the TIMIT and Buckeye corpora suggest that the proposed model is superior to the baseline models and reaches state-of-the-art performance in terms of F1 and R-value. We further explore the use of phonetic transcription as additional supervision and show this yields minor improvements in performance but substantially better convergence rates. We additionally evaluate the model on a He-brew corpus and demonstrate such phonetic supervision can be beneficial in a multi-lingual setting.

Topics & Concepts

TIMITComputer scienceSpeech recognitionKeyword spottingParameterized complexitySpottingTask (project management)Artificial intelligenceTranscription (linguistics)Speech processingHidden Markov modelBoundary (topology)Natural language processingMathematicsLinguisticsEngineeringAlgorithmMathematical analysisPhilosophySystems engineeringSpeech Recognition and SynthesisMusic and Audio ProcessingSpeech and Audio Processing
Phoneme Boundary Detection Using Learnable Segmental Features | Litcius