EURASIP Journal on Audio, Speech, and Music Processing (May 2022)

Improving sign-algorithm convergence rate using natural gradient for lossless audio compression

  • Taiyo Mineo,
  • Hayaru Shouno

DOI
https://doi.org/10.1186/s13636-022-00243-w
Journal volume & issue
Vol. 2022, no. 1
pp. 1 – 15

Abstract

Read online

Abstract In lossless audio compression, the predictive residuals must remain sparse when entropy coding is applied. The sign algorithm (SA) is a conventional method for minimizing the magnitudes of residuals; however, this approach yields poor convergence performance compared with the least mean square algorithm. To overcome this convergence performance degradation, we propose novel adaptive algorithms based on a natural gradient: the natural-gradient sign algorithm (NGSA) and normalized NGSA. We also propose an efficient natural-gradient update method based on the AR(p) model, which requires O ( p ) $\mathcal {O}(p)$ multiply–add operations at every adaptation step. In experiments conducted using toy and real music data, the proposed algorithms achieve superior convergence performance to the SA. Furthermore, we propose a novel lossless audio codec based on the NGSA, called the natural-gradient autoregressive unlossy audio compressor (NARU), which is open-source and implemented in C. In a comparative experiment with existing, well-known codecs, NARU exhibits superior compression performance. These results suggest that the proposed methods are appropriate for practical applications.

Keywords