TY - JOUR
T1 - Speech spectrum conversion based on speaker interpolation and multi-functional representation with weighting by radial basis function networks
AU - Iwahashi, Naoto
AU - Sagisaka, Yoshinori
PY - 1995/2
Y1 - 1995/2
N2 - This paper describes a speech spectrum transformation method by interpolating multi-speakers' spectral patterns and multi-functional representation with Radial Basis Function networks. The interpolation is carried out using spectral parameters between pre-stored multiple speakers' utterance data to generate new spectrum patterns. Adaptation to a target speaker can be performed by this interpolation, which uses only a small amount of training data to generate new speech spectrum sequences close to those of the target speaker. Moreover, to obtain more precise adaptation by using a larger amount of training data, the transformation is represented by multiple interpolating functions. The multiple functions' outputs are weighted-summed, using weighting values given by RBF networks. The parameters of this multi-functional transformation are adapted by the gradient descent method. Adaptation experiments were carried out using four pre-stored speakers' data. Using only one word spoken by the target speaker for training, the distance between the target speaker's spectrum and the spectrum generated by the single interpolating function was reduced by about 35% compared with the distance between the target speaker's spectrum and the spectrum of the pre-stored speaker closest to the target. Using ten training words, the reduction rate increased to 48% by the multi-functional transformation.
AB - This paper describes a speech spectrum transformation method by interpolating multi-speakers' spectral patterns and multi-functional representation with Radial Basis Function networks. The interpolation is carried out using spectral parameters between pre-stored multiple speakers' utterance data to generate new spectrum patterns. Adaptation to a target speaker can be performed by this interpolation, which uses only a small amount of training data to generate new speech spectrum sequences close to those of the target speaker. Moreover, to obtain more precise adaptation by using a larger amount of training data, the transformation is represented by multiple interpolating functions. The multiple functions' outputs are weighted-summed, using weighting values given by RBF networks. The parameters of this multi-functional transformation are adapted by the gradient descent method. Adaptation experiments were carried out using four pre-stored speakers' data. Using only one word spoken by the target speaker for training, the distance between the target speaker's spectrum and the spectrum generated by the single interpolating function was reduced by about 35% compared with the distance between the target speaker's spectrum and the spectrum of the pre-stored speaker closest to the target. Using ten training words, the reduction rate increased to 48% by the multi-functional transformation.
KW - Multiple functional representation
KW - Radial basis function
KW - Speaker adaptation
KW - Speaker interpolation
KW - Speech spectrum conversion
KW - Voice conversion
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U2 - 10.1016/0167-6393(94)00051-B
DO - 10.1016/0167-6393(94)00051-B
M3 - Article
AN - SCOPUS:0029251946
SN - 0167-6393
VL - 16
SP - 139
EP - 151
JO - Speech Communication
JF - Speech Communication
IS - 2
ER -