Title :
Sparse regressions for joint segmentation and linear prediction
Author :
Angelosante, Daniele
Author_Institution :
ABB Corp. Res. Center, Baden-Daettwil, Switzerland
Abstract :
Regularizing the least-squares criterion with the total number of coefficient changes, it is possible to estimate time-varying (TV) autoregressive (AR) models with piecewise-constant coefficients. Such models emerge in various applications including speech segmentation using linear predictors. To cope with the large-size optimization task, the problem is cast as a sparse regression one, and is solved by resorting to an efficient block-coordinate descent algorithm. This enables joint segmentation and linear predictor coefficients identification with linear computational complexity per iteration. Modern trends in linear prediction for speech processing also envision sparsity in the model residuals. Indeed, sparse residuals allow for an improved representation of voiced speech. So far, sparse linear coding was proposed in a stationary scenario, i.e, after speech segmentation. This paper extends joint segmentation and linear prediction coefficients identification to sparse linear coding. Fortunately, coordinate descent approaches are still applicable to carry out the optimization tasks. Numerical tests have shown the benefits of the proposed algorithm.
Keywords :
autoregressive processes; compressed sensing; convex programming; linear predictive coding; TV AR models; block-coordinate descent algorithm; coordinate descent approaches; joint segmentation; large-size optimization task; least-squares criterion; linear computational complexity; linear predictor coefficients identification; piecewise-constant coefficients; sparse linear coding; sparse regression; sparse residuals; speech segmentation; time-varying autoregressive models; voiced speech; Computational modeling; Cost function; Joints; Speech; Speech processing; Convex optimization; Coordinate descent; Linear prediction; Sparse regression;
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2014 IEEE International Conference on
Conference_Location :
Florence
DOI :
10.1109/ICASSP.2014.6853613