Digital Signal Processing Reference
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singing—especially for pitch—will require suited methods of adaptation or trans-
formation. Further, extending the database to reach higher musical variation, e.g., by
Jazz or non-Western music would be of interest. Finally, multi-task learning could
help to exploit singer trait interdependencies in learning, given the observations for
height assessment in speech as was described in Sect. 10.4.3 .
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