Jakita O. Thomas, Eric Mibuari, et al.
CHI 2011
Recently we have introduced a method named inter-dataset variability compensation (IDVC) in the context of speaker recognition in a mismatched dataset. IDVC compensates dataset shifts in the i-vector space by constraining the shifts to a low dimensional subspace. The subspace is estimated from a heterogeneous development set which is partitioned into homogenous subsets. In this work we generalize the IDVC method to compensate inter-dataset variability attributed to additional PLDA hyper-parameters, namely the within and between speaker covariance matrices. Using the proposed method we managed to recover 85% of the degradation due to mismatched PLDA training in the framework of the JHU-2013 domain adaptation challenge.
Jakita O. Thomas, Eric Mibuari, et al.
CHI 2011
Christopher S. Campbell, Paul P. Maglio
Int. J. Hum. Comput. Stud.
Luís Henrique Neves Villaça, Sean Wolfgand Matsui Siqueira, et al.
SBSI 2023
James Fogarty, Scott E. Hudson, et al.
CHI 2004